-DOCSTART- -X- O O 34f3da5c09f0dae6fa79f79176a6cc8f The O results O of O the O aerosol B-climate-nature retrieval O for O pollution B-climate-hazards events O featuring O mineral B-climate-nature dust I-climate-nature , O volcanic B-climate-nature aerosol I-climate-nature , O biomass B-climate-hazards burning I-climate-hazards and O pollution B-climate-hazards associated O with O boreal O forest B-climate-hazards fires I-climate-hazards are O compared O to O independent O space O borne O and O ground O based O observations O and O showed O coinciding O temporal O and O spatial O dynamics O of O the O aerosol B-climate-nature distribution O . O Applied O together O , O these O methods O allow O for O the O first O time O the O retrieval O of O aerosol B-climate-nature amount O over O snow B-climate-nature and O ice B-climate-nature on O local O to O global O scales O . O -DOCSTART- -X- O O f4b313679d2ed570e0dc147900b4c39f The O Qilian O Mountains O Scientific O Expedition O was O launched O under O the O framework O of O the O Second O Tibetan O Plateau O Scientific O Expedition O Program O after O tightening O eco B-climate-mitigations - I-climate-mitigations environmental I-climate-mitigations management I-climate-mitigations in O the O Qilian O Mountains O . O The O expedition O focused O on O three O key O areas O : O ( O 1 O ) O Ecosystem B-climate-organisms diversity I-climate-organisms and O security O , O ( O 2 O ) O dynamic O changes O in O glaciers B-climate-nature and O permafrost B-climate-nature , O and O ( O 3 O ) O changes O in O human O activities O and O their O corresponding O eco B-climate-impacts - I-climate-impacts livelihood I-climate-impacts impacts I-climate-impacts . O More O than O 200 O researchers O participated O in O this O expedition O that O lasted O for O 260 O d O and O spanned O 47500 O km O . O First O , O investigations O were O performed O for O changes O in O human O activities O before O and O after O tightening O eco B-climate-mitigations - I-climate-mitigations environmental I-climate-mitigations management I-climate-mitigations in O the O Qilian O Mountains O . O The O local O eco B-climate-assets - I-climate-assets environmental I-climate-assets benefits I-climate-assets and O economic B-climate-impacts losses I-climate-impacts after O the O tightening O eco B-climate-mitigations - I-climate-mitigations environmental I-climate-mitigations management I-climate-mitigations were O analyzed O by O adopting O the O Integrated B-climate-models Valuation I-climate-models of I-climate-models Ecosystem I-climate-models Services I-climate-models and I-climate-models Tradeoffs I-climate-models model O and O the O System B-climate-models of I-climate-models Integrated I-climate-models Environmental I-climate-models and I-climate-models Economic I-climate-models Accounting I-climate-models method O . O Second O , O investigations O were O performed O for O several O glaciers B-climate-nature located O in O the O Qilian O Mountains O to O evaluate O the O characteristics O of O glacier B-climate-nature distribution O and O variations O in O glacier B-climate-nature changes O . O The O glacier B-climate-nature ice I-climate-nature storage I-climate-nature and O annual O degradation O rate O were O further O estimated O using O data O derived O from O a O glacier B-climate-nature inventory O and O Landsat B-climate-observations images O . O Further O , O the O spatial O and O temporal O grassland B-climate-nature patterns O and O the O associated O productivity O were O analyzed O . O Moreover O , O dynamic O changes O in O the O five O main O lakes B-climate-nature in O the O Qilian O Mountains O were O assessed O at O different O spatial O and O temporal O scales O , O and O the O activities O of O the O key O rare B-climate-organisms species I-climate-organisms such O as O the O snow B-climate-organisms leopard I-climate-organisms were O monitored O regularly O using O infrared O cameras O . O -DOCSTART- -X- O O 553120ff92ab4f5e2b219c82834aeea7 Aquatic O biogeochemical O models O are O widely O used O as O tools O for O understanding O aquatic B-climate-nature ecosystems I-climate-nature and O predicting O their O response O to O various O stimuli O ( O e.g. O , O nutrient B-climate-problem-origins loading I-climate-problem-origins , O toxic B-climate-problem-origins substances I-climate-problem-origins , O climate O change O ) O . O -DOCSTART- -X- O O fcdda47218ada9f03ca02477a30d9ad7 Therefore O , O we O calculated O the O start O , O end O , O and O length B-climate-properties of I-climate-properties the I-climate-properties thermal I-climate-properties growing I-climate-properties season I-climate-properties ( O SOS B-climate-properties , O EOS B-climate-properties , O and O LOS B-climate-properties , O respectively O ) O , O which O are O indicators O of O the O theoretical O plant B-climate-properties growth I-climate-properties season I-climate-properties , O based O on O the O daily B-climate-properties - I-climate-properties mean I-climate-properties temperature I-climate-properties of O the O Princeton B-climate-datasets Global I-climate-datasets Forcing I-climate-datasets dataset O from O 1948 O to O 2016 O . O However O , O not O all O the O areas O with O higher O precipitation B-climate-nature tended O to O have O a O later O SOS B-climate-properties , O later O EOS B-climate-properties , O and O shorter O LOS B-climate-properties . O Among O the O seven O ecoregions O , O spatial O synchrony O in O the O SOS B-climate-properties in O temperate B-climate-nature broadleaf I-climate-nature / I-climate-nature mixed I-climate-nature forests I-climate-nature and O temperate B-climate-nature conifer I-climate-nature forests I-climate-nature changed O the O most O noticeably O , O decreasing O in O both O regions O . O Conversely O , O spatial O synchrony O in O the O EOS O in O the O taiga B-climate-nature , O temperate B-climate-nature grasslands I-climate-nature / O savannas B-climate-nature / O shrublands B-climate-nature and O tundra B-climate-nature changed O the O most O noticeably O , O increasing O in O each O region O . O -DOCSTART- -X- O O e28a7a687f2752452efffab7e1a25517 Studies O addressing O climate O variability O during O the O last O millennium O generally O focus O on O variables O with O a O direct O influence O on O climate O variability O , O like O the O fast O thermal O response O to O varying O radiative B-climate-nature forcing I-climate-nature , O or O the O large O - O scale O changes O in O atmospheric B-climate-nature dynamics O ( O e.g. O North B-climate-nature Atlantic I-climate-nature Oscillation I-climate-nature ) O . O The O ocean B-climate-nature responds O to O these O variations O by O slowly O integrating O in O depth O the O upper O heat O flux O changes O , O thus O producing O a O delayed O influence O on O ocean B-climate-properties heat I-climate-properties content I-climate-properties ( O OHC B-climate-properties ) O that O can O later O impact O low O frequency O SST B-climate-properties ( O sea B-climate-properties surface I-climate-properties temperature I-climate-properties ) O variability O through O reemergence O processes O . O In O this O study O , O both O the O externally O and O internally O driven O variations O of O the O OHC B-climate-properties during O the O last O millennium O are O investigated O using O a O set O of O fully O coupled O simulations O with O the O ECHO B-climate-models - I-climate-models G I-climate-models ( O coupled O climate O model O ECHAMA4 B-climate-models and O ocean B-climate-nature model O HOPE B-climate-models - I-climate-models G I-climate-models ) O atmosphere O – O ocean O general O circulation O model O ( O AOGCM O ) O . O When O compared O to O observations O for O the O last O 55 O yr O , O the O model O tends O to O overestimate O the O global O trends O and O underestimate O the O decadal O OHC B-climate-properties variability I-climate-properties . O For O instance O , O upper B-climate-properties temperature I-climate-properties in O the O equatorial O Pacific O is O controlled O by O ENSO B-climate-nature ( O El B-climate-nature Nino I-climate-nature Southern I-climate-nature Oscillation I-climate-nature ) O variability O from O interannual O to O multidecadal O timescales O . O Also O , O both O the O Pacific B-climate-nature Decadal I-climate-nature Oscillation I-climate-nature ( O PDO B-climate-nature ) O and O the O Atlantic B-climate-nature Multidecadal I-climate-nature Oscillation I-climate-nature ( O AMO B-climate-nature ) O modulate O intermittently O the O interdecadal O OHC B-climate-properties variability I-climate-properties in O the O North O Pacific O and O Mid O Atlantic O , O respectively O . O The O NAO B-climate-nature , O through O its O influence O on O North O Atlantic O surface B-climate-nature heat I-climate-nature fluxes I-climate-nature and O convection B-climate-nature , O also O plays O an O important O role O on O the O OHC B-climate-properties at O multiple O timescales O , O leading O first O to O a O cooling O in O the O Labrador O and O Irminger O seas O , O and O later O on O to O a O North O Atlantic O warming O , O associated O with O a O delayed O impact O on O the O AMO B-climate-nature . O -DOCSTART- -X- O O e4b5f45d2b7e71dae6b312237de6f857 To O identify O weather O - O related O risk O factors O and O their O roles O in O Japanese O encephalitis B-climate-impacts transmission O and O to O provide O policy O implications O for O local O health O authorities O and O communities O . O -DOCSTART- -X- O O 341c98bc38a3a14d5ef6fd8455a8eddf Climate O change O is O viewed O as O the O major O threat O to O the O security O of O water B-climate-assets supplies I-climate-assets in O most O parts O of O the O world O in O the O coming O decades O , O and O the O water B-climate-assets resources I-climate-assets literature O continues O to O be O dominated O by O impact O and O risk O assessments O based O on O the O latest O climate O projections O from O General O Circulation O Models O ( O GCMs O ) O . O More O focus O is O needed O on O economic O analyses O that O can O inform O the O major O investments O in O water B-climate-mitigations use I-climate-mitigations efficiency I-climate-mitigations measures O which O can O deliver O the O water B-climate-mitigations savings I-climate-mitigations needed O to O avert O widespread O water B-climate-hazards scarcity I-climate-hazards . O -DOCSTART- -X- O O 74f64d675ff3d49210a6432b8ece5cc7 To O characterize O the O urban B-climate-nature flow I-climate-nature , O we O chose O a O semi O - O empirical O onedimensional O model O for O the O determination O of O urban B-climate-nature wind I-climate-nature speed I-climate-nature profiles O Nicholson O ( O 1975 O ) O coupled O with O the O AROME B-climate-models model O . O -DOCSTART- -X- O O 82c4c8268087d7410e79e73fbcb2b4df As O compared O with O Coupled B-climate-models Model I-climate-models Intercomparison I-climate-models Project I-climate-models Phase I-climate-models 5 I-climate-models ( O CMIP5 B-climate-models ) O models O , O the O future O projection O of O soil B-climate-properties moisture I-climate-properties based O on O the O latest O CMIP6 B-climate-models shows O opposite O trends O over O parts O of O China O . O Therefore O , O we O project O seasonal O soil B-climate-nature drought B-climate-hazards over O China O by O using O the O superensemble O that O includes O a O set O of O CMIP5 B-climate-models and O CMIP6 B-climate-models soil B-climate-properties moisture I-climate-properties data O , O high O resolution O land B-climate-nature surface I-climate-nature simulations O driven O by O bias O - O corrected O CMIP5 B-climate-models climate O forcings O , O as O wells O large O ensemble O ( O LE O ) O simulation O data O . O -DOCSTART- -X- O O 3026a0ebf5c9ff526e8c25fd6baa120f This O article O reports O a O case O study O that O integrated O traditional O and O scientific O knowledge O using O participatory B-climate-models three I-climate-models - I-climate-models dimensional I-climate-models modeling I-climate-models ( O P3DM B-climate-models ) O in O BoeBoe O village O , O Solomon O Islands O . O -DOCSTART- -X- O O b591f6b6f88e170361bb242cad6bb8d7 The O Australian B-climate-models Community I-climate-models Climate I-climate-models and I-climate-models Earth I-climate-models System I-climate-models Simulator I-climate-models ( O ACCESS B-climate-models ) O has O recently O been O coupled O to O the O Community B-climate-models Atmosphere I-climate-models Biosphere I-climate-models Land I-climate-models Exchange I-climate-models ( O CABLE B-climate-models ) O model O . O We O examine O how O this O model O represents O climate B-climate-hazards extremes I-climate-hazards derived O by O the O Expert B-climate-organizations Team I-climate-organizations on I-climate-organizations Climate I-climate-organizations Change I-climate-organizations Detection I-climate-organizations and I-climate-organizations Indices I-climate-organizations ( O ETCCDI B-climate-organizations ) O and O compare O them O to O observational O data O sets O using O the O AMIP B-climate-models framework O . O -DOCSTART- -X- O O 063eb3007c7994ccefb9d9d8f74a4aa7 This O paper O explores O the O drivers O of O adoption O of O climate B-climate-mitigations - I-climate-mitigations smart I-climate-mitigations agricultural I-climate-mitigations ( O CSA B-climate-mitigations ) O technologies O and O practices O , O taking O into O account O the O complementarity O among O agricultural B-climate-assets technologies O and O heterogeneity O of O the O farm B-climate-assets households O , O using O data O from O Lushoto O in O Tanzania O . O -DOCSTART- -X- O O 31f10c884d4ef93dceb71225e61e29b7 This O study O utilizes O the O National B-climate-organizations Oceanic I-climate-organizations and I-climate-organizations Atmospheric I-climate-organizations Administration I-climate-organizations Geophysical I-climate-organizations Fluid I-climate-organizations Dynamics I-climate-organizations Laboratory I-climate-organizations three O - O dimensional O global O chemical O transport O model O to O quantify O the O impacts O of O biomass O burning O on O tropospheric B-climate-nature concentrations O of O carbon O monoxide O ( O CO O ) O , O nitrogen O oxides O ( O NOx O ) O , O and O ozone O ( O O3 O ) O . O -DOCSTART- -X- O O f433cd510db9e349bdf6d8764030bf47 In O this O paper O we O present O a O non O - O linear O agricultural O supply O model O for O the O analysis O of O the O economic O impacts O of O changes O in O crop B-climate-assets yields I-climate-assets due O to O climate O change O . O -DOCSTART- -X- O O 32fa8149190f057a6b248f4ed091caff In O the O current O study O , O the O reliability O of O the O DiCaSM B-climate-models was O assessed O when O applied O to O the O Candelaro O catchment O ; O those O parameters O that O may O cause O uncertainty O in O model O output O were O investigated O using O a O generalized O likelihood O uncertainty O estimation O ( O GLUE)methodology O . O -DOCSTART- -X- O O cf7e872d5803ef53e829bd1740edfcf7 Model O - O based O methods O are O very O time O - O consuming O to O set O up O and O require O a O good O understanding O of O human O processes O and O time O series O of O water B-climate-problem-origins abstraction I-climate-problem-origins , O land B-climate-problem-origins use I-climate-problem-origins change I-climate-problem-origins , O and O water B-climate-assets infrastructure I-climate-assets and O management O , O which O often O are O not O available O . O -DOCSTART- -X- O O 82f0b0c50c35de2f938de1ef75bde117 Three O internally O consistent O socioeconomic O scenarios O are O used O to O value O health B-climate-assets benefits I-climate-assets of O greenhouse B-climate-mitigations gas I-climate-mitigations mitigation I-climate-mitigations policies I-climate-mitigations specifically O derived O from O slowing O climate O change O . O -DOCSTART- -X- O O c6215701d394cc52b35afd4d1ba4cbff A O study O of O integrated O climate O change O impact O assessment O and O adaptation O study O for O agricultural B-climate-assets and O timbering B-climate-assets activities O in O Mackenzie O Basin O , O Canada O , O was O conducted O through O development O / O application O of O an O inexact O dynamic O optimization O ( O IDO O ) O model O that O can O reflect O complex O system O features O and O a O related O fuzzy O relation O analysis O ( O FRA O ) O method O that O is O useful O for O comprehensive O assessment O of O impact O patterns O . O -DOCSTART- -X- O O 29fc371b97724c977fbf79f0f60cb25f Compared O to O CMIP3 B-climate-models , O CMIP5 B-climate-models scenarios O show O higher O temperature B-climate-properties and O wider O ranges O of O changes O in O precipitation B-climate-nature and O runoff B-climate-nature . O -DOCSTART- -X- O O a80229cef3430a1c5a868c11f2784cc7 Within O the O Interreg B-climate-organizations IVB I-climate-organizations project I-climate-organizations AMICE I-climate-organizations , O involving O 17 O European O partners O , O such O studies O are O being O conducted O at O the O scale O of O the O international O catchment B-climate-nature of O river O Meuse O , O with O a O focus O on O the O Vesdre O reservoirs O in O Belgium O and O the O Rur O reservoirs O in O Germany O . O -DOCSTART- -X- O O 7c519e0cf445c8b8223075909e478b77 We O analyzed O projected O climate O change O in O four O basins B-climate-nature , O quantified O climate O change O impact O on O annual O and O seasonal O runoff B-climate-nature based O on O the O Soil B-climate-models Water I-climate-models Assessment I-climate-models Tool I-climate-models , O and O estimated O the O uncertainty O constrained O by O the O global O circulation O models O ( O GCMs O ) O structure O and O the O Representative O Concentration O Pathways O ( O RCPs O ) O . O This O led O to O projected O precipitation B-climate-nature increase O by O about O 2 O % O for O the O four O basins B-climate-nature , O and O to O a O decrease O in O simulated O annual O runoff I-climate-nature of O 8 O % O and O 1 O % O in O the O Shiyang O and O Huaihe O rivers O , O respectively O , O but O to O an O increase O of O 4 O % O in O the O Chaobai O and O Fujiang O rivers O . O The O uncertainty O in O projected O annual B-climate-properties temperature I-climate-properties was O dominated O by O the O GCMs O or O the O RCPs O ; O however O , O that O of O precipitation B-climate-nature was O constrained O mainly O by O the O GCM O . O -DOCSTART- -X- O O 16a36fd1c3c447dc736546bb7caa88a7 In O the O second O , O the O existing O system O ’s O response O to O both O today O ’s O and O future O design O storms B-climate-nature are O simulated O by O a O coarse B-climate-models sewer I-climate-models model I-climate-models setup I-climate-models ( O MOUSE B-climate-models ) O and O a O detailed B-climate-models coupled I-climate-models surface I-climate-models - I-climate-models sewer I-climate-models model I-climate-models setup I-climate-models ( O TSR B-climate-models ) O . O -DOCSTART- -X- O O b2c46d82be9d48a2af518a7dbc1f0227 In O order O to O complete O the O analysis O , O the O downscaled O scenario O from O ENSEMBLES B-climate-models was O also O used O with O the O datasets O of O 49 O weather O stations O from O FEM B-climate-organizations and O the O “ O RMAWGEN B-climate-models ” O packages O ( O Cordano O et O al O . O , O 2012 O ) O created O for O this O project O in O R O statistical O open O source O software O ( O Gentleman O et O al O . O , O 1997 O ) O . O -DOCSTART- -X- O O f2ca4b0adb5d8b239b010cd0bcb7ae5f forced O with O sea B-climate-properties surface I-climate-properties temperature I-climate-properties and O sea B-climate-nature ice I-climate-nature for O the O period O 2061 O - O 2090 O from O the O CMIP3 B-climate-models HadGEM1 B-climate-models experiments O . O Here O we O use O an O RCM O at O 50 O km O resolution O over O the O Arctic O and O 25 O km O over O Svalbard O , O which O captures O well O the O present O - O day O pattern O of O precipitation B-climate-nature and O provides O a O detailed O picture O of O the O projected O changes O in O the O behaviour O of O the O oceanic B-climate-nature - I-climate-nature atmosphere I-climate-nature moisture I-climate-nature fluxes I-climate-nature and O how O they O affect O precipitation B-climate-nature . O -DOCSTART- -X- O O f5160c9383a19e501ba419589d9131af Aim O Ixodes B-climate-hazards scapularis I-climate-hazards is O the O most O important O vector O of O human O tick B-climate-hazards - I-climate-hazards borne I-climate-hazards pathogens I-climate-hazards in O the O United O States O , O which O include O the O agents O of O Lyme B-climate-impacts disease I-climate-impacts , O human O babesiosis B-climate-impacts and O human O anaplasmosis B-climate-impacts , O among O others O . O The O density B-climate-properties of O host O - O seeking O I. B-climate-hazards scapularis I-climate-hazards nymphs O is O an O important O component O of O human O risk O for O acquiring O Borrelia B-climate-hazards burgdorferi I-climate-hazards , O the O aetiological O agent O of O Lyme B-climate-impacts disease I-climate-impacts . O -DOCSTART- -X- O O dc537843e218b03825aaeb78140d0107 The O retrieval O of O both O height B-climate-properties and O velocity B-climate-properties of O a O volcanic B-climate-nature plume I-climate-nature is O an O important O issue O in O volcanology B-climate-hazards . O As O an O example O , O it O is O known O that O large O volcanic B-climate-hazards eruptions I-climate-hazards can O temporarily O alter O the O climate O , O causing O global O cooling O and O shifting O precipitation B-climate-nature patterns O ; O the O ash B-climate-nature / I-climate-nature gas I-climate-nature dispersion I-climate-nature in O the O atmosphere B-climate-nature , O their O impact O and O lifetime B-climate-properties around O the O globe O , O greatly O depends O on O the O injection B-climate-properties altitude I-climate-properties . O Knowing O the O plume B-climate-properties altitude I-climate-properties is O also O important O to O get O the O correct O amount O of O SO O 2 O concentration B-climate-properties from O dedicated O spaceborne O spectrometers O . O Satellite O remote O sensing O offers O a O comprehensive O and O safe O way O to O estimate O plume B-climate-properties height I-climate-properties . O -DOCSTART- -X- O O 3cf0b09fe9a344001226ada9481e10b7 Abstract O Three O extensive O global O wind B-climate-properties speed I-climate-properties and O wave B-climate-properties height I-climate-properties datasets O ( O altimeter O , O radiometer O , O model O reanalysis O ) O are O analysed O to O investigate O the O global O wind B-climate-properties speed I-climate-properties and O wave B-climate-properties height I-climate-properties climate O . O At O high O latitudes O both O altimeter O and O radiometer O winds B-climate-nature are O biased O high O compared O to O buoy O measurements O . O As O winds B-climate-nature have O a O diurnal O variation O in O magnitude O , O this O preferential O measurement O time O can O also O bias O statistical O values O obtained O from O such O satellite O systems O . O -DOCSTART- -X- O O 7e58ae12fa69f0ce7a4a033807fb04a7 An O intermediate O complexity O atmospheric O general O circulation O model O has O been O used O to O investigate O the O influence O of O the O South B-climate-nature Atlantic I-climate-nature Ocean I-climate-nature ( I-climate-nature SAO I-climate-nature ) I-climate-nature dipole I-climate-nature ( O SAOD B-climate-nature ) O on O summer O precipitation B-climate-nature over O the O Guinea O Coast O of O West O Africa O . O Consistently O , O above O ( O below O ) O the O average O precipitation B-climate-nature is O simulated O over O the O Guinea O Coast O during O the O positive O ( O negative O ) O phase O of O the O SAOD B-climate-nature . O During O the O SAOD B-climate-nature , O cool O SST B-climate-properties anomaly I-climate-properties in O the O extra B-climate-nature - I-climate-nature tropical I-climate-nature SAO O off O the O Brazil O – O Uruguay O – O Argentina O coast O gives O rise O to O suppressed O convection B-climate-nature and O mass O divergence O . O -DOCSTART- -X- O O 9438617e54eba9376866f3b132100bd7 island B-climate-nature of O Tenerife O , O a O UNESCO B-climate-organizations Biosphere B-climate-mitigations Reserve I-climate-mitigations in O the O Atlantic O Ocean O , O aims O to O be O energy O self O - O sufficient O in O order O to O reduce O its O carbon B-climate-properties footprint I-climate-properties . O To O accomplish O this O goal O it O should O develop O the O renewable O sources O , O in O particular O wave B-climate-mitigations and I-climate-mitigations offshore I-climate-mitigations wind I-climate-mitigations energy I-climate-mitigations . O -DOCSTART- -X- O O 0b6944158cf45f4e2eb8b0ba80c9035f Droughts B-climate-hazards are O disproportionately O impacting O global O dryland B-climate-nature regions O where O ecosystem O health O and O function O are O tightly O coupled O to O moisture B-climate-properties availability O . O Drought B-climate-hazards severity O is O commonly O estimated O using O algorithms O such O as O the O standardized B-climate-properties precipitation I-climate-properties - I-climate-properties evapotranspiration I-climate-properties index I-climate-properties ( O SPEI B-climate-properties ) O , O which O can O estimate O climatic O water B-climate-nature balance I-climate-nature impacts O at O various O hydrologic O scales O by O varying O computational O length O . O In O this O study O , O we O tested O components O of O climatic O water B-climate-nature balance I-climate-nature , O including O SPEI B-climate-properties and O SPEI B-climate-properties computation O lengths O , O to O recreate O multi O - O decadal O and O periodic O soilmoisture B-climate-nature patterns O across O soil O profiles O at O 866 O sites O in O the O western O United O States O . O -DOCSTART- -X- O O8472d27b2066e5fea960c17702d56df9 European B-climate-organizations Commission I-climate-organizations have O developed O a O long O - O term O energy O strategy O that O , O if O successful O , O will O result O in O net B-climate-mitigations - I-climate-mitigations zero I-climate-mitigations greenhouse I-climate-mitigations gas I-climate-mitigations emissions I-climate-mitigations in O Europe O . O -DOCSTART- -X- O Of6a9335da7820f8119c7fd81b0e1ce68 Estuaries B-climate-nature are O impacted O by O multiple O anthropogenic O stressors O from O eutrophication B-climate-hazards to O climate O change O . O Long O - O term O observational O datasets O allow O the O determination O of O trends O in O estuarine B-climate-nature indicators O and O the O prediction O of O future O conditions O . O Here O , O a O dataset O of O water B-climate-assets quality I-climate-assets and O demersal B-climate-organisms fish I-climate-organisms community O composition O in O a O Long O Island O Sound O embayment O ( O Norwalk O Harbor O , O Connecticut O ) O from O 1987 O to O 2016 O was O examined O . O -DOCSTART- -X- O O35a1108710496848025f53ecd78137f1 The O aim O of O our O study O was O to O determine O global O soil B-climate-nature organic I-climate-nature carbon I-climate-nature ( O SOC B-climate-nature ) O change O patterns O after O LUC O and O to O assess O the O impacts O of O both O biophysical O and O socioeconomic O factors O that O influence O stocks O of O SOC B-climate-nature after O LUC O simultaneously O . O However O , O also O , O socioeconomic O variables O such O as O indices O of O poverty B-climate-impacts , O population B-climate-problem-origins growth I-climate-problem-origins , O and O levels O of O corruption B-climate-problem-origins were O important O . O -DOCSTART- -X- O O9c20de8788e8d7e01e05d3d8463edbb0 Urban B-climate-hazards heat I-climate-hazards island I-climate-hazards ( O UHI B-climate-hazards ) O effect O , O the O side O effect O of O rapid O urbanization B-climate-problem-origins , O has O become O an O obstacle O to O the O further O healthy O development O of O the O city O . O For O this O purpose O , O the O geographically O - O weighted O regression O ( O GWR O ) O approach O is O used O to O explore O the O scale O effects O in O a O mountainous O city O , O namely O the O change O laws O and O characteristics O of O the O relationships O between O land B-climate-properties surface I-climate-properties temperature I-climate-properties and O impact O factors O at O different O spatial O resolutions O ( O 30–960 O m O ) O . O The O impact O factors O include O the O Soil B-climate-datasets - I-climate-datasets adjusted I-climate-datasets Vegetation I-climate-datasets Index I-climate-datasets ( O SAVI B-climate-datasets ) O , O the O Index B-climate-datasets - I-climate-datasets based I-climate-datasets Built I-climate-datasets - I-climate-datasets up I-climate-datasets Index I-climate-datasets ( O IBI B-climate-datasets ) O , O and O the O Soil B-climate-datasets Brightness I-climate-datasets Index I-climate-datasets ( O NDSI B-climate-datasets ) O , O which O indicate O the O coverage O of O the O vegetation B-climate-nature , O built B-climate-assets - I-climate-assets up I-climate-assets , O and O bare B-climate-nature land I-climate-nature , O respectively O . O Results O from O the O experiment O exemplified O by O Chongqing O showed O that O the O GWR O approach O had O a O better O prediction O accuracy O and O a O better O ability O to O describe O spatial O non O - O stationarity O than O the O OLS O approach O judged O by O the O analysis O of O the O local O coefficient O of O determination O ( O R2 O ) O , O Corrected O Akaike O Information O Criterion O ( O AICc O ) O , O and O F O - O test O at O small O spatial O resolution O ( O < O 240 O m O ) O ; O however O , O when O the O spatial O scale O was O increased O to O 480 O m O , O this O advantage O has O become O relatively O weak O . O -DOCSTART- -X- O O0db452927abef4a6d15c93618e068c7a We O analyse O various O observational O data O sets O in O order O to O assess O and O to O compare O th O spatio O - O temporal O characteristics O and O intensity B-climate-properties of O the O Sahel O flood O in O 2007 O and O the O associated O rain B-climate-nature events O . O -DOCSTART- -X- O Oc3c945c3bfd4abaf083821635cdf2025 This O report O gives O a O summary O of O the O results O of O the O research O project O “ O Future B-climate-organizations of I-climate-organizations Finnish I-climate-organizations energy I-climate-organizations business I-climate-organizations – I-climate-organizations scenarios I-climate-organizations and I-climate-organizations strategies I-climate-organizations ” O ( O SALKKU B-climate-organizations ) O . O The O SALKKU B-climate-organizations research O was O carried O out O as O a O joint O research O project O of O VTT B-climate-organizations Technical I-climate-organizations Research I-climate-organizations Centre I-climate-organizations of O Finland O ( O VTT B-climate-organizations ) O and O MTT B-climate-organizations Agrifood I-climate-organizations Research I-climate-organizations Finland O ( O MTT B-climate-organizations ) O . O The O demand O for O energy O was O studied O on O a O global O , O an O EU B-climate-organizations , O and O especially O on O an O Asian O level O . O -DOCSTART- -X- O O9057f514442ca720550ed7157ed08eaa Abstract O biodiversity B-climate-organisms in O the O Tropical O Andes O is O under O continuous O threat O from O anthropogenic O activities O . O We O modeled O a O broad O range O of O taxa O ( O 11,012 O species O of O birds B-climate-organisms and O vascular B-climate-organisms plants I-climate-organisms ) O , O including O both O endemic B-climate-organisms and O widespread O species B-climate-organisms and O provide O a O comprehensive O estimation O of O climate O change O impacts O on O the O Andes O . O While O some O areas O appear O to O be O climatically O stable B-climate-properties ( O e.g. O Pichincha O and O Imbabura O in O Ecuador O ; O and O Narino O , O Cauca O , O Valle O del O Cauca O and O Putumayo O in O Colombia O ) O and O hence O depict O little O diversity B-climate-hazards loss I-climate-hazards and/or O potential O species O gains O , O major O negative O impacts O were O also O observed O . O Tropical B-climate-nature high O Andean O grasslands B-climate-nature ( O paramos B-climate-nature and O punas B-climate-nature ) O and O evergreen B-climate-nature montane I-climate-nature forests I-climate-nature , O two O key O ecosystems O for O the O provision O of O environmental O services O in O the O region O , O are O projected O to O experience O negative O changes O in O species O richness O and O high O rates O of O species O turnover O . O -DOCSTART- -X- O Oed7cd9a511deddaadd13e3af6655675d Every O year O hundreds O of O thousands O of O people B-climate-assets become O homeless B-climate-impacts due O to O natural O disasters O and O are O consequently O in O need O of O temporary O accommodation O until O they O can O return O to O their O reconstructed O homes B-climate-assets . O An O example O of O this O is O the O Pakistan O earthquake B-climate-hazards in O 2005 O where O no O appropriate O winterised B-climate-mitigations tents I-climate-mitigations were O available O and O thermal O comfort O could O not O be O gained O , O given O the O extremely O cold O winter O conditions O . O In O its O second O part O the O work O responds O to O the O pressing O need O for O the O winterisation B-climate-mitigations of O family O tents O by O presenting O a O number O of O different O options O for O a O floor O insulation B-climate-mitigations . O -DOCSTART- -X- O Oc7e5398796e30f616a36d2c48d496b95 This O study O considers O the O Pan B-climate-models - I-climate-models European I-climate-models Soil I-climate-models Erosion I-climate-models Risk I-climate-models Assessment I-climate-models - O Desertification B-climate-models Mitigation I-climate-models Cost I-climate-models - I-climate-models Effectiveness I-climate-models modelling O approach O to O capture O a O greater O range O of O climatic O conditions O to O assess O the O potential O effect O of O an O improved O agricultural B-climate-mitigations management I-climate-mitigations practice I-climate-mitigations emerged O from O field O trials O as O a O promising O strategy O for O enhancing O food B-climate-assets security I-climate-assets and O reducing O soil B-climate-hazards and I-climate-hazards land I-climate-hazards degradation I-climate-hazards . O The O model O considers O the O biophysical O and O socio O - O economic O benefits O of O the O improved O soil B-climate-mitigations conservation I-climate-mitigations technique I-climate-mitigations ( O T3 O ) O - O residue B-climate-mitigations mulch I-climate-mitigations combined O with O pigeon B-climate-mitigations pea I-climate-mitigations hedges I-climate-mitigations and O an O organic O amendment O , O against O a O local O baseline O practice O ( O T0 O ) O . O -DOCSTART- -X- O Ocb6cfc0153e7593e9dd9d77c8b532b08 Wind B-climate-mitigations energy I-climate-mitigations is O associated O with O many O geographical O factors O including O wind B-climate-properties speed I-climate-properties , O climate O change O , O surface B-climate-nature topography I-climate-nature , O environmental O impacts O , O and O several O economic O factors O , O most O notably O the O advancement O of O wind B-climate-mitigations technology I-climate-mitigations and O energy B-climate-properties prices I-climate-properties . O Wind B-climate-mitigations energy I-climate-mitigations generation O is O directly O related O to O the O characteristics O of O spatial O wind B-climate-nature . O In O Kuwait O , O wind B-climate-mitigations energy I-climate-mitigations is O an O appropriate O choice O as O a O source O of O energy O generation O . O Climatic O data O were O attained O through O the O readings O of O eight O distributed O monitoring O stations O affiliated O with O Kuwait B-climate-organizations Institute I-climate-organizations for I-climate-organizations Scientific I-climate-organizations Research I-climate-organizations ( O KISR B-climate-organizations ) O . O The O researchers O applied O the O Suitability B-climate-models Model I-climate-models to O analyze O the O study O by O using O the O ArcGIS B-climate-models program O . O -DOCSTART- -X- O O75f3b5bbbbe464e1edefdde3d37077f4 To O compare O the O fitness O of O five O stochastic O differential O equations O ( O SDEs O ) O to O the O European B-climate-organizations Union I-climate-organizations allowances O spot O price O , O we O apply O regression O theory O to O obtain O the O point O and O interval O estimations O for O the O parameters O of O the O SDEs O . O An O empirical O evaluation O demonstrates O that O the O mean O reverting O square O root O process O ( O MRSRP O ) O has O the O best O fitness O of O five O SDEs O to O forecast O the O spot O price O . O To O reduce O the O degree O of O smog B-climate-nature , O we O develop O a O new O trading B-climate-mitigations scheme I-climate-mitigations in O which O firms O have O to O hand O many O more O allowances O to O the O government O when O they O emit O one O unit O of O air B-climate-hazards pollution I-climate-hazards on O heavy O pollution B-climate-hazards days O , O versus O one O allowance O on O clean O days O . O Thus O , O we O set O up O the O SDE O MRSRP O model O with O Markovian O switching O to O analyse O the O evolution O of O the O spot O price O in O such O a O scheme O . O -DOCSTART- -X- O Ode7dfd0d31a3dd297aa778527f48929d In O a O large O scale O , O forest B-climate-nature productivity O is O primarily O driven O by O two O large O fluxes O , O gross B-climate-properties primary I-climate-properties production I-climate-properties ( O GPP B-climate-properties ) O , O which O is O the O source O for O all O carbon O in O forest B-climate-nature ecosystems O , O and O heterotrophic B-climate-properties respiration I-climate-properties . O Here O we O show O how O uncertainty O of O GPP B-climate-properties projections O of O Finnish O boreal B-climate-nature forests I-climate-nature divides O between O input O , O mechanistic O and O parametric O uncertainty O . O We O used O the O simple O semi O - O empirical O stand O GPP B-climate-properties and O water B-climate-nature balance I-climate-nature model O PRELES B-climate-models with O an O ensemble O of O downscaled O global O circulation O model O ( O GCM O ) O projections O for O the O 21st O century O under O different O emissions O and O forcing O scenarios O ( O both O RCP O and O SRES O ) O . O -DOCSTART- -X- O O11a48067ce25ab1e08b9865cb2337130 The O dynamic O changes O of O forest B-climate-hazards fire I-climate-hazards events O are O due O to O the O swing O of O climate O parameter O . O Geospatial O technology O has O strong O capability O to O analyze O various O thematic O datasets O towards O visualization O of O spatial O / O temporal O pattern O and O plays O a O vital O role O in O fire B-climate-mitigations management I-climate-mitigations efforts O . O This O paper O aims O to O analyze O the O climate O and O forest B-climate-hazards fire I-climate-hazards trend O using O Geospatial O technology O in O the O state O of O Orissa O of O India O . O The O 84.5 O % O of O forest B-climate-hazards fire I-climate-hazards events O are O observed O in O the O month O of O March O and O April O and O it O is O significantly O high O in O the O south O of O Kandhamal O , O east O of O Kalahandi O , O north O of O Rayagada O and O north O of O Gajapati O district O . O The O solar B-climate-properties radiation I-climate-properties increased O to O 144 O % O in O the O month O of O March O when O compared O with O preceding O month O whereas O relative B-climate-properties humidity I-climate-properties was O decreased O to O 64 O % O in O the O same O month O . O The O evaluation O of O Cramer O V O coefficient O values O of O minimum B-climate-properties temperature I-climate-properties , O solar B-climate-properties radiation I-climate-properties , O maximum B-climate-properties temperature I-climate-properties and O relative B-climate-properties humidity I-climate-properties are O found O to O be O 0.302 O , O 0.327 O , O 0.366 O and O 0.482 O respectively O . O -DOCSTART- -X- O O9fb2a34d46502970d8704fd344f3b7e5 study O was O set O to O investigate O the O impact O of O climate O change O on O rural B-climate-assets livelihoods I-climate-assets in O the O North O Nguu O Mountains O in O Kilindi O District O , O Tanzania O . O -DOCSTART- -X- O Oc2168e1bd2c3ba97a5864b542281b438 We O combine O these O climate O impact O estimates O with O the O GTAP B-climate-models model O of O global B-climate-assets trade I-climate-assets in O order O to O estimate O the O national B-climate-assets welfare I-climate-assets changes O which O are O decomposed O into O three O components O -DOCSTART- -X- O Obfd3e2021e8c3ca8391aecc6350a8c38 Using O mathematical O modelling O tools O , O we O assessed O the O potential O for O land B-climate-problem-origins use I-climate-problem-origins change I-climate-problem-origins ( O LUC B-climate-problem-origins ) O associated O with O the O Intergovernmental B-climate-organizations Panel I-climate-organizations on I-climate-organizations Climate I-climate-organizations Change I-climate-organizations low- O and O high O - O end O emission B-climate-problem-origins scenario O ( O RCP2.6 B-climate-datasets and O RCP8.5 B-climate-datasets ) O to O impact O malaria B-climate-impacts transmission O in O Africa O . O To O drive O a O spatially O explicit O , O dynamical O malaria B-climate-impacts model O , O data O from O the O four O available O earth O system O models O ( O ESMs O ) O that O contributed O to O the O LUC B-climate-problem-origins experiment O of O the O Fifth B-climate-models Climate I-climate-models Model I-climate-models Intercomparison I-climate-models Project I-climate-models are O used O . O -DOCSTART- -X- O Od047956e63de201932620ea0ef938b72 Statistically O significant O changes O in O tropopause B-climate-nature fold I-climate-nature frequencies O are O identified O in O both O Hemispheres O , O occasionally O exceeding O 3 O % O , O which O are O associated O with O the O projected O changes O in O the O position O and O intensity B-climate-properties of O the O subtropical B-climate-nature jet B-climate-nature streams I-climate-nature . O A O strengthening O of O ozone O STT B-climate-nature is O projected O for O future O at O both O Hemispheres O , O with O an O induced O increase O of O transported O stratospheric B-climate-nature ozone O tracer O throughout O the O whole O troposphere B-climate-nature , O reaching O up O to O 10 O nmol O / O mol O in O the O upper O troposphere B-climate-nature , O 8 O nmol O / O mol O in O the O middle O troposphere B-climate-nature and O 3 O nmol O / O mol O near O the O surface B-climate-nature . O -DOCSTART- -X- O O2702c371a58dd1a390f788e3cd6c9240 Understanding O the O impact O of O various O climate O features O on O wave B-climate-nature climate O is O important O for O effective O coastal B-climate-nature climate O adaptation O and O mitigation B-climate-mitigations strategy I-climate-mitigations planning O . O In O the O present O study O , O the O effect O of O tropical B-climate-nature and O extra B-climate-nature - I-climate-nature tropical I-climate-nature climate O modes O such O as O Indian B-climate-nature Ocean I-climate-nature Dipole I-climate-nature ( O IOD B-climate-nature ) O , O El B-climate-nature Niño I-climate-nature Southern I-climate-nature Oscillation I-climate-nature ( O ENSO B-climate-nature ) O and O Southern B-climate-nature Annular I-climate-nature Mode I-climate-nature ( O SAM B-climate-nature ) O on O wind B-climate-nature - O wave B-climate-nature climate O of O the O Indian O Ocean O ( O IO O ) O is O studied O using O multiple O linear O regression O of O individual O climate O indices O on O relevant O wind B-climate-nature - O wave B-climate-nature parameters O . O There O are O two O regions O of O importance O for O swell B-climate-nature generation O in O the O Indian O Ocean O - O a O region O between O 40 O ° O and O 60 O ° O S O in O the O Southern O Ocean O ( O SO O ) O and O another O region O in O the O Eastern O Tropical O Indian O Ocean O ( O ETIO O ; O 10 O ° O –30 O ° O S O , O 60 O ° O –100 O ° O E O ) O . O -DOCSTART- -X- O Oab16dc9a50f63c96ff6d0d58e3b146dc As O a O result O , O state O forestry B-climate-assets authorities O should O take O precautions O against O this O bark B-climate-hazards beetle I-climate-hazards species O in O the O pine B-climate-organisms stands O of O northern O Turkey O in O the O future O . O -DOCSTART- -X- O O71aeba3d171884648fca991b73d2eba2 As O global O climate O change O alters O many O aspects O of O seasonal O variability O , O including O extreme O events O and O changes O in O mean O conditions O , O organisms B-climate-organisms must O respond O appropriately O or O go O extinct B-climate-hazards . O -DOCSTART- -X- O Oc0a6e55943b44425126281fbda78c9c4 my O Erasmus O year O in O La O Coruna O ( O Spain O ) O , O I O was O lucky O enough O to O make O friends O with O a O person O who O has O joined O the O humanitarian O missions O in O the O southern O Philippines O in O support O of O the O victims O of O Typhoon O Bopha O , O who O has O instilled O in O me O a O great O interest O for O the O Filipino O culture O and O their O relationship O with O nature O , O the O climate O and O natural O disasters O , O and O I O promised O myself O to O take O part O in O humanitarian O action O once O concluded O the O university O studies O . O -DOCSTART- -X- O O1062ef7b930c8c5dca09e5e1ac12bdd3 Climate O warming O increases O vulnerability O to O drought B-climate-hazards in O Mediterranean O water O - O limited O forests B-climate-nature . O However O , O we O still O lack O knowledge O of O the O long O - O term O physiological O responses O of O coexisting O pine B-climate-organisms species O in O these O forests B-climate-nature regarding O their O ability O to O cope O with O warming O - O induced O drought B-climate-hazards stress O . O -DOCSTART- -X- O O3af18f42ec58c39993cbbb5a444aaa6c Transport B-climate-assets infrastructure I-climate-assets networks I-climate-assets are O increasingly O vulnerable O to O disruption B-climate-impacts from O extreme B-climate-hazards rainfall I-climate-hazards events O due O to O increasing O surface B-climate-nature water I-climate-nature runoff I-climate-nature from O urbanization B-climate-problem-origins and O changes O in O climate O . O Impacts O from O such O disruptions B-climate-impacts typically O extend O far O beyond O the O flood B-climate-impacts footprint I-climate-impacts , O because O of O the O interconnection O and O spatial O extent O of O modern O infrastructure B-climate-assets . O An O integrated O flood B-climate-hazards risk O assessment O couples O high O resolution O information O on O depth B-climate-properties and O velocity B-climate-properties from O the O CityCAT B-climate-models urban B-climate-hazards flood I-climate-hazards model O with O empirical O analysis O of O vehicle B-climate-assets speeds O in O different O depths B-climate-properties of I-climate-properties flood I-climate-properties water I-climate-properties , O to O perturb O a O transport O accessibility O model O and O determine O the O impact O of O a O given O event O on O journey O times O across O the O urban O area O . O A O case O study O in O Newcastle O - O upon O - O Tyne O ( O UK O ) O shows O that O even O minor O flooding B-climate-hazards associate O with O a O 1 O in O 10 O year O event O can O cause O traffic B-climate-impacts disruptions I-climate-impacts of O nearly O half O an O hour O . O -DOCSTART- -X- O O8b951ff3cd22c0ae3bbed7effdeacc6d Earth O 's O atmospheric B-climate-properties CO I-climate-properties 2 I-climate-properties level I-climate-properties has O increased O beyond O 400 O ppm O and O still O continuing O to O rise O . O In O fact O , O this O is O the O highest O level O in O the O last O 2 O million O years O . O One O core O strategies O in O the O mitigation B-climate-mitigations mix O are O negative O emissions O technologies O ( O NETs O ) O which O are O also O explicitly O described O as O important O options O in O many O IPCC B-climate-organizations ( O AR5 B-climate-datasets ) O CO B-climate-greenhouse-gases 2 I-climate-greenhouse-gases emission B-climate-problem-origins scenarios O . O Among O others O , O BioEnergy O with O Carbon O Capture O and O Storage O ( O BECCS O ) O are O shown O their O potential O for O CO B-climate-greenhouse-gases 2 I-climate-greenhouse-gases removable O from O the O atmosphere B-climate-nature . O BECCS O as O the O NETs O are O most O widely O selected O by O integrated O assessment O models O ( O IAMs O ) O to O meet O the O requirements O of O temperature B-climate-properties limits O of O 2 O ° O and O below O . O -DOCSTART- -X- O O488090e1b7cc93816587443585c8aa54 The O parameters O that O had O a O significant O impact O on O shoreline B-climate-hazards erosion I-climate-hazards were O : O reef B-climate-nature flat O width B-climate-properties , O reef B-climate-nature flat O depth B-climate-properties , O island B-climate-nature width B-climate-properties , O and O atoll B-climate-nature diameter B-climate-properties . O Atolls B-climate-nature with O narrower O , O deeper O reef B-climate-nature flats O , O narrower O islands B-climate-nature , O and O smaller O diameters B-climate-properties were O most O susceptible O to O shoreline B-climate-hazards instability I-climate-hazards with O sea B-climate-hazards level I-climate-hazards rise I-climate-hazards . O Windward B-climate-nature islands I-climate-nature are O projected O to O lengthen O and O migrate O toward O the O lagoon B-climate-nature , O leeward B-climate-nature islands I-climate-nature are O projected O to O lengthen O and O migrate O toward O the O reef B-climate-nature rim O , O and O oblique O islands B-climate-nature are O projected O to O migrate O leeward O and O toward O the O lagoon B-climate-nature . O -DOCSTART- -X- O O3d2f30d4b7abc7b927a634190241d89b Global O navigation O satellite O systems O ( O GNSSs O ) O have O become O an O important O tool O to O derive O atmospheric B-climate-nature products O , O such O as O the O total O zenith B-climate-properties tropospheric I-climate-properties delay I-climate-properties ( O ZTD B-climate-properties ) O and O precipitable B-climate-properties water I-climate-properties vapor I-climate-properties ( O PWV B-climate-properties ) O for O weather O and O climate O studies O . O The O ocean B-climate-properties tide I-climate-properties loading I-climate-properties ( O OTL B-climate-properties ) O effect O is O one O of O the O primary O errors O that O affects O the O accuracy O of O GNSS O - O derived O ZTD B-climate-properties / O PWV B-climate-properties , O which O means O the O study O and O choice O of O the O OTL B-climate-properties model O is O an O important O issue O for O high O - O accuracy O ZTD B-climate-properties estimation O . O -DOCSTART- -X- O Obae06f77125e4e185730842d66e29a73 Mesoamerica O and O the O Caribbean O are O low O - O latitude O regions O at O risk O for O the O effects O of O climate O change O . O Global O climate O models O provide O large O - O scale O assessment O of O climate O drivers O , O but O , O at O a O horizontal O resolution O of O 100 O km O , O can O not O resolve O the O effects O of O topography B-climate-nature and O land B-climate-properties use I-climate-properties as O they O impact O the O local O temperature B-climate-properties and O precipitation B-climate-nature that O are O keys O to O climate O impacts O . O We O developed O a O robust O dynamical O downscaling O strategy O that O used O the O WRF B-climate-models regional O climate O model O to O downscale O at O 4 O - O 12 O km O resolution O GCM O results O . O -DOCSTART- -X- O O >>> bpf Annotation of "everything" up to here -DOCSTART- -X- O O >>> bpf Next a chronologic subselection -DOCSTART- -X- O O26334055e107cf4a78da272c01811a7a We O use O a O combination O of O an O integrated O environmental O model O ( O IMAGE B-climate-models ) O and O climate O envelope O models O for O European O plant B-climate-organisms species I-climate-organisms for O several O climate O change O scenarios O to O estimate O changes O in O mean B-climate-properties stable I-climate-properties area I-climate-properties of O species B-climate-organisms and O species B-climate-organisms turnover O . O -DOCSTART- -X- O O1258005cc451776c7081b32a38f671f8 -DOCSTART- -X- O Ode5713a54da8e93af5ecb699a2623c61 Our O research O is O based O on O field O data O collected O in O the O Northern O Brazilian O Amazon O in O 2009 O within O the O Small O Grant O research O programme O of O the O German B-climate-organizations Federal I-climate-organizations Ministry I-climate-organizations for I-climate-organizations Economic I-climate-organizations Cooperation I-climate-organizations and I-climate-organizations Development I-climate-organizations ( O BMZ B-climate-organizations ) O . O Based O on O these O data O , O we O show O how O dynamic O discrete O time O models O can O be O developed O and O implemented O using O the O dynamic O simulation O software O STELLA B-climate-models . O -DOCSTART- -X- O Oc8a1087a5ebab8abee2e609aa884aa63 One O of O the O ways O to O reducing O greenhouse O gas O emission O is O by O assessing O the O environmental O impact O associated O with O food B-climate-problem-origins production I-climate-problem-origins , O and O one O of O the O well O - O known O methodologies O used O for O environmental O impact O evaluation O is O life O cycle O assessment O model O ( O LCA O ) O . O This O paper O presents O the O results O of O LCA O analysis O of O cassava B-climate-assets flour O production O in O Southwestern O Nigeria O . O -DOCSTART- -X- O O248fbab473537819c48428ef707953eb In O the O semiarid B-climate-nature interior O of O the O Iberian O Peninsula O , O the O topographic O insulation B-climate-mitigations from O the O surrounding O seas B-climate-nature promotes O the O role O of O internal O sources O of O moisture B-climate-properties and O water B-climate-mitigations recycling I-climate-mitigations in O the O rainfall B-climate-nature regime O . O In O inland O Iberia O , O the O annual O cycle O of O precipitation B-climate-nature often O has O a O distinctive O peak O in O the O springtime O , O when O evapotranspiration B-climate-nature ( O ET B-climate-nature ) O is O the O highest O , O in O contrast O to O the O coastal B-climate-nature areas I-climate-nature , O where O it O is O more O closely O related O to O the O external O moisture B-climate-properties availability O and O synoptic O forcing O , O with O a O maximum O in O winter O - O autumn O and O a O pronounced O minimum O in O the O summer O . O -DOCSTART- -X- O O8b5ffca44eacad5306caf10322dbdd3b In O large O mountainous B-climate-nature catchments B-climate-nature , O shallow O unconfined O alluvial B-climate-nature aquifers B-climate-nature play O an O important O role O in O conveying O subsurface B-climate-nature runoff I-climate-nature to O the O foreland O . O Here O , O an O approach O to O overcome O this O discrepancy O is O discussed O using O the O example O of O the O German O - O Austrian O Upper O Danube O catchment O , O where O a O coarse O ground B-climate-nature water I-climate-nature flow O model O was O developed O using O MODFLOW B-climate-models . O In O order O to O show O the O efficiency O of O the O developed O method O , O it O was O tested O and O compared O to O a O finely O discretized O ground B-climate-nature water I-climate-nature model O of O the O Ammer O subcatchment O . O -DOCSTART- -X- O Oc66519cefc848756ba96da04af61061c Smallholder B-climate-assets farmers B-climate-assets produce O about O 70 O % O of O Africa O ’s O food B-climate-assets supply I-climate-assets . O These O farmers B-climate-assets are O vulnerable O to O a O number O of O risks O , O mainly O climate O related O , O which O have O a O tremendous O impact O on O food B-climate-assets security I-climate-assets and O thus O poverty B-climate-impacts . O This O paper O describes O crops B-climate-assets , O water B-climate-nature and O drought B-climate-hazards services O that O are O being O developed O in O the O AfriCultuReS B-climate-organizations project O . O -DOCSTART- -X- O O08b7c23a0b109945fb9d1204dc36b0b2 Urmia O Lake O , O the O largest O lake B-climate-nature in O Iran O , O is O an O important O water B-climate-nature body O and O habitat B-climate-organisms for O a O variety O of O different O species B-climate-organisms . O Subsequently O these O values O were O introduced O to O the O Long B-climate-models Ashton I-climate-models Research I-climate-models Station I-climate-models Weather I-climate-models Generator I-climate-models model O ( O LARS B-climate-models - I-climate-models WG I-climate-models ) O to O downscale O and O produce O time O series O of O temperature B-climate-properties and O precipitation B-climate-nature in O the O future O , O subject O to O the O uncertainty O of O climate O models O . O -DOCSTART- -X- O Ob8a294ed94386b38464f9e122ee2e91d LDAS B-climate-models - I-climate-models Monde I-climate-models ingests O satellite O - O derived O surface B-climate-properties soil I-climate-properties moisture I-climate-properties ( O SSM B-climate-properties ) O and O leaf B-climate-properties area I-climate-properties index I-climate-properties ( O LAI B-climate-properties ) O estimates O to O constrain O the O interactions O between O soil B-climate-nature , O biosphere B-climate-nature , O and O atmosphere B-climate-nature ( O ISBA B-climate-models ) O land B-climate-nature surface I-climate-nature model O ( O LSM O ) O coupled O with O the O CNRM B-climate-organizations ( O Centre B-climate-organizations National I-climate-organizations de I-climate-organizations Recherches I-climate-organizations Météorologiques I-climate-organizations ) O version O of O the O total B-climate-models runoff I-climate-models integrating I-climate-models pathways I-climate-models ( O CTRIP B-climate-models ) O continental O hydrological B-climate-nature system O ( O ISBA B-climate-models - I-climate-models CTRIP I-climate-models ) O . O LDAS B-climate-models - I-climate-models Monde I-climate-models is O forced O by O the O ERA-5 B-climate-models atmospheric B-climate-nature reanalysis O from O the O European B-climate-organizations Center I-climate-organizations for I-climate-organizations Medium I-climate-organizations Range I-climate-organizations Weather I-climate-organizations Forecast I-climate-organizations ( O ECMWF B-climate-organizations ) O from O 2010 O to O 2016 O leading O to O a O seven O - O year O , O quarter O degree O spatial O resolution O offline O reanalysis O of O land B-climate-nature surface I-climate-nature variables O ( O LSVs O ) O over O CONUS O . O -DOCSTART- -X- O O8986db15c45f03fde7360524ad9dce0a Over O Arctic O sea B-climate-nature ice I-climate-nature , O pressure B-climate-properties ridges O and O floe B-climate-nature and O melt B-climate-nature pond I-climate-nature edges O all O introduce O discrete O obstructions O to O the O flow O of O air B-climate-nature or O water B-climate-nature past O the O ice B-climate-nature and O are O a O source O of O form B-climate-properties drag I-climate-properties . O The O drag B-climate-nature coefficients O are O incorporated O into O the O Los B-climate-models Alamos I-climate-models Sea I-climate-models Ice I-climate-models Model I-climate-models ( O CICE B-climate-models ) O and O show O the O influence O of O the O new O drag B-climate-nature parameterization O on O the O motion O and O state O of O the O ice B-climate-nature cover I-climate-nature , O with O the O most O noticeable O being O a O depletion O of O sea B-climate-nature ice I-climate-nature over O the O west O boundary O of O the O Arctic O Ocean O and O over O the O Beaufort O Sea O . O -DOCSTART- -X- O O3770f1a827feac49cfbecead9eceecd2 Water B-climate-hazards scarcity I-climate-hazards affects O large O parts O of O the O world O . O Despite O recent O studies O that O analyze O the O effect O of O climate O change O on O water B-climate-hazards scarcity I-climate-hazards , O e.g. O using O climate O projections O under O representative O concentration O pathways O ( O RCP O ) O of O the O fifth B-climate-datasets assessment I-climate-datasets report I-climate-datasets of O the O IPCC B-climate-organizations ( O AR5 B-climate-datasets ) O , O decision O support O for O closing O the O water B-climate-hazards gap I-climate-hazards between O now O and O 2100 O does O not O exist O at O a O meaningful O scale O and O with O a O global O coverage O . O Water B-climate-assets supply I-climate-assets was O computed O using O the O PCR B-climate-models - I-climate-models GLOBWB I-climate-models hydrological B-climate-nature and O water B-climate-assets resources I-climate-assets model O , O parameterized O at O 5 O arcminutes O for O the O whole O globe O . O We O ran O PCR B-climate-models - I-climate-models GLOBWB I-climate-models with O a O daily O forcing O derived O from O five O different O GCM O models O from O the O CMIP5 B-climate-models ( O GFDL B-climate-models - I-climate-models ESM2 I-climate-models M I-climate-models , O Hadgem2 B-climate-models - I-climate-models ES I-climate-models , O IPSL B-climate-models - I-climate-models CMA5 I-climate-models - I-climate-models LR I-climate-models , O MIROC B-climate-models - I-climate-models ESM I-climate-models - I-climate-models CHEM I-climate-models , O NorESM1 B-climate-models - I-climate-models M I-climate-models ) O that O were O bias O corrected O using O observation O - O based O WATCH B-climate-datasets data O between O 1960 O - O 1999 O . O -DOCSTART- -X- O O569437d00ead7080f5c75040e171931c SEAREG B-climate-organizations analyses O socio O - O economic O and O environmental O effects O of O climate O and O sea B-climate-properties level I-climate-properties changes I-climate-properties in O the O Baltic O Sea O Region O ( O BSR O ) O . O Within O the O project O , O the O Swedish B-climate-organizations Meteorological I-climate-organizations and I-climate-organizations Hydrological I-climate-organizations Institute I-climate-organizations ( O SMHI B-climate-organizations ) O develops O scenarios O of O future O climate O and O sea B-climate-nature level I-climate-nature for O the O year O 2100 O which O will O then O be O connected O with O regional O data O . O Coastal B-climate-nature dynamics O was O estimated O for O the O next O 100 O years O , O considering O the O island O of O Usedom O as O an O example O . O Data O of O the O different O SMHI B-climate-organizations climate O scenarios O were O used O for O this O calculation O . O -DOCSTART- -X- O Oee2139dbea88f78d6f98b2eb6225939b By O comparing O the O predicted O fire B-climate-hazards PM2.5 B-climate-hazards emissions I-climate-hazards from O the O interpretable O ML O model O with O the O Global B-climate-datasets Fire I-climate-datasets Emissions I-climate-datasets Database I-climate-datasets ( O GFED B-climate-datasets ) O observations O and O predictions O from O process O - O based O models O in O the O Fire B-climate-models Modeling I-climate-models Intercomparison I-climate-models Project I-climate-models ( O FireMIP B-climate-models ) O , O the O ML O model O is O also O used O to O diagnose O the O process O - O based O models O to O inform O future O development O . O Results O show O promising O performance O for O the O ML O model O , O Community B-climate-models Land I-climate-models Model I-climate-models ( O CLM B-climate-models ) O , O and O Joint B-climate-models UK I-climate-models Land I-climate-models environment I-climate-models Simulator I-climate-models - I-climate-models Interactive I-climate-models Fire I-climate-models And I-climate-models Emission I-climate-models Algorithm I-climate-models For I-climate-models Natural I-climate-models Environments I-climate-models ( O JULES B-climate-models - I-climate-models INFERNO I-climate-models ) O in O reproducing O the O spatial O distributions O , O seasonality O , O and O interannual O variability O of O fire B-climate-hazards emissions I-climate-hazards over O CONUS O . O -DOCSTART- -X- O O2339c8dabadce81d70167959a015f8d5 In O the O present O study O , O the O dynamical O downscaling O technique O was O applied O in O the O Advanced B-climate-models Weather I-climate-models Research I-climate-models and I-climate-models Forecasting I-climate-models numerical O model O WRF B-climate-models - I-climate-models ARW I-climate-models , O to O investigate O and O validate O the O performance O of O different O physics O parameterizations O . O The O WRF B-climate-models model O , O was O forced O by O ERA B-climate-datasets - I-climate-datasets INTERIM I-climate-datasets reanalysis O data O , O for O a O short O period O of O one O year O ( O January O 2002 O – O December O 2002 O ) O , O over O the O area O of O the O MED B-climate-models - I-climate-models CORDEX I-climate-models domain O of O 20 O km O horizontal O resolution O , O downscaled O to O the O domain O of O Greece O with O grid O spacing O of O 5 O km O . O The O results O of O the O model O simulations O have O been O compared O with O all O available O station O measurements O from O the O European O Climate B-climate-datasets Assessment I-climate-datasets and I-climate-datasets Dataset I-climate-datasets ( O ECA&D B-climate-datasets ) O for O the O daily B-climate-properties precipitation I-climate-properties and O 2 O - O m O air B-climate-properties temperature I-climate-properties , O through O the O computation O of O statistical O metrics O . O -DOCSTART- -X- O Oe3dc4c0ede0ce8da36307bc1e0650485 Halogenated O organic O compounds O are O naturally O produced O in O the O ocean B-climate-nature and O emitted O to O the O atmosphere B-climate-nature . O The O halogenated O very O short O - O lived O substances O ( O VSLS O ) O , O such O as O bromoform O , O have O atmospheric B-climate-properties lifetimes I-climate-properties of O less O than O half O a O year O . O When O VSLS O reach O the O stratosphere B-climate-nature , O they O enhance O ozone B-climate-hazards depletion I-climate-hazards and O thus O impact O the O climate O . O During O the O research B-climate-observations cruises I-climate-observations SO234 I-climate-observations - I-climate-observations 2 I-climate-observations and O SO235 B-climate-observations in O July O - O August O 2014 O onboard O RV B-climate-observations SONNE I-climate-observations , O we O measured O oceanic B-climate-properties and I-climate-properties atmospheric I-climate-properties concentrations I-climate-properties of O bromoform O ( O tropical B-climate-properties lifetime I-climate-properties at O 10 O km O = O 17 O days O ) O , O dibromomethane O ( O 150 O days O ) O and O methyl O iodide O ( O 3.5 O days O ) O in O the O subtropical B-climate-nature and O tropical B-climate-nature West O Indian O Ocean O and O calculated O their O emission O strengths O . O We O use O the O Langrangian O transport O model O FLEXPART I-climate-models driven O by O ERA B-climate-datasets - I-climate-datasets Interim I-climate-datasets meteorological O fields O to O investigate O the O transport O of O oceanic B-climate-nature emissions I-climate-nature in O the O atmosphere B-climate-nature . O Furthermore O , O we O investigate O the O connection O between O the O Asian B-climate-nature monsoon I-climate-nature anticyclone I-climate-nature and O the O oceanic B-climate-nature source O regions O using O backward O trajectories O . O -DOCSTART- -X- O O https://semanticscholar.org/paper/85808f0cb1cb020d8ad0c40822992dc6cdd371ca This O paper O presents O a O new O approach O to O long O - O term O flood B-climate-hazards risk O assessment O in O accordance O with O the O UK B-climate-datasets Foresight I-climate-datasets Future I-climate-datasets Flooding I-climate-datasets Report I-climate-datasets -DOCSTART- -X- O O https://semanticscholar.org/paper/8c19cb08726b1111a44034d5129c56e13804616b Quantifying O the O reliability O of O precipitation B-climate-properties datasets O for O monitoring O large‐scale O East O Asian O precipitation B-climate-properties variations O . O Early O detection O of O extreme O drought B-climate-hazards and O flood B-climate-hazards events O either O over O the O whole O globe O or O a O broad O geographical O region O , O and O timely O dissemination O of O this O information O , O is O indispensable O for O mitigation B-climate-mitigations and O disaster B-climate-mitigations preparedness I-climate-mitigations . O Recently O , O the O APEC B-climate-organizations Climate I-climate-organizations Center I-climate-organizations ( O APCC B-climate-organizations ) O has O launched O a O global O precipitation B-climate-properties variation O monitoring O product O based O on O the O Climate B-climate-datasets Anomaly I-climate-datasets Monitoring I-climate-datasets System I-climate-datasets - I-climate-datasets Outgoing I-climate-datasets Longwave I-climate-datasets Radiation I-climate-datasets Precipitation I-climate-datasets Index I-climate-datasets ( O CAMS B-climate-datasets - I-climate-datasets OPI I-climate-datasets ) O data O . O Here O we O quantify O the O reliability O of O CAMS B-climate-datasets - I-climate-datasets OPI I-climate-datasets , O as O well O as O other O gauge O - O satellite O - O merged O and O reanalysis O precipitation B-climate-properties datasets O , O for O the O purpose O of O monitoring O large O - O scale O precipitation B-climate-properties variability O in O East O Asia O . O The O ground O truth O is O the O newly O available O gauge O - O based O data O from O the O project O titled O ' O Asian B-climate-datasets Precipitation I-climate-datasets - I-climate-datasets Highly I-climate-datasets - I-climate-datasets Resolved I-climate-datasets Observational I-climate-datasets Data I-climate-datasets Integration I-climate-datasets Towards I-climate-datasets Evaluation I-climate-datasets ( O APHRODITE B-climate-datasets ) O of O the O Water B-climate-nature Resources I-climate-nature ' O . O It O is O found O that O the O seasonal O - O to O - O interannual O rainfall B-climate-nature deficit O and O surplus O given O by O various O reanalysis O systems O sometimes O do O not O match O the O spatial O patterns O seen O in O the O APHRODITE B-climate-datasets data O . O Moreover O , O maps O showing O the O Standardized B-climate-properties Precipitation I-climate-properties Index I-climate-properties ( O SPI B-climate-properties ) O become O less O and O less O reliable O as O the O time O scale O based O on O which O values O are O calculated O increases O . O Overall O , O CAMS B-climate-datasets - I-climate-datasets OPI I-climate-datasets is O found O to O be O reliable O for O monitoring O large O - O scale O precipitation B-climate-properties variations O over O the O East O Asian O sector O . O -DOCSTART- -X- O O https://semanticscholar.org/paper/4c34681d4a74dfb6e02ec9d7e28bfaf70d27c000 Current O and O Future O Impacts O of O Extreme O Flood B-climate-hazards Events O . O Inadequate B-climate-problem-origins timber I-climate-problem-origins extraction I-climate-problem-origins management O of O forests B-climate-nature , O cattle B-climate-problem-origins farming O , O abusive B-climate-problem-origins recreational I-climate-problem-origins practices I-climate-problem-origins , O and O rapid O urban B-climate-problem-origins expansion I-climate-problem-origins are O all O factors O that O create O significant O problems O in O the O Cantabrian O area O watershed B-climate-nature for O the O sustainable O management O of O the O hydrological B-climate-nature ecosystem O services O . O In O this O chapter O , O ENSEMBLES B-climate-organizations RT3 O climate O model O outputs O are O analysed O and O calibrated O with O local O observation O data O recorded O daily O . O The O hydrological O / O hydraulic O coupling O model O ( O MikeShe B-climate-models - O Mike11 B-climate-models ) O is O applied O by O forcing O the O validated O model O output O . O According O to O the O results O , O under O the O medium O greenhouse O emission B-climate-problem-origins scenario O ( O A1B B-climate-datasets ) O , O the O Regional O Climate O Models O HIRHAM I-climate-models ( O 2001–2050 O ) O and O RACMO B-climate-models ( O 2051–2100 O ) O show O an O increase O in O extreme B-climate-hazards precipitation I-climate-hazards . O The O expected O changes O show O spatial O variability O depending O on O local O characteristics O ( O topography B-climate-nature , O proximity O to O the O coast B-climate-nature , O vegetation B-climate-nature , O etc O . O ) O and O ranging O between O 6–26 O % O for O HIRHAM B-climate-models and O 11–12 O % O for O RACMO B-climate-models . O An O increase O of O 22 O ± O 2 O % O is O expected O in O the O HIRHAM B-climate-models climatic O model O for O upstream O peak O discharge B-climate-properties with O a O return O period O exceeding O 50 O years O . O