--- license: eupl-1.1 task_categories: - time-series-forecasting tags: - climate size_categories: - 100M Data is retrieved from [Corpernicus Climate Data Store](https://cds.climate.copernicus.eu/cdsapp#!/home) on [ERA5-Land hourly data from 1950 to present](https://cds.climate.copernicus.eu/cdsapp#!/dataset/10.24381/cds.e2161bac?tab=overview)
Thailand areas in this context is **Latitude** = **[5.77434, 20.43353]** and **Longitude** = **[97.96852, 105.22908]**
For more details of data, you can refer to [ERA5-Land hourly data from 1950 to present](https://cds.climate.copernicus.eu/cdsapp#!/dataset/reanalysis-era5-land?tab=overview) - Data Granularity: Hourly per Latitude/ Longitude - Period: **31/Dec/1999** - **08/May/2023** - Temperature Unit: Celsius (°C) (Original data from [ERA5-Land hourly data from 1950 to present](https://cds.climate.copernicus.eu/cdsapp#!/dataset/10.24381/cds.e2161bac?tab=overview) is Kelvin) # Source Data - Organization of the producer: ECMWF # Data Creation Below is an example of how to make data query using Python via [CDS API](https://cds.climate.copernicus.eu/api-how-to) in monthly requests.
Script can be found [here](https://huggingface.co/datasets/WasuratS/ECMWF_Thailand_Land_Air_Temperatures/blob/main/cds_api_requestor_example.py) ``` python import cdsapi c = cdsapi.Client() month_list = [str(num).zfill(2) for num in range(1, 13)] day_list = [str(num).zfill(2) for num in range(1, 32)] time_list = [str(num).zfill(2) + ":00" for num in range(0, 24)] year_list = [str(num) for num in range(2000, 2022)] for year in year_list: for month in month_list: c.retrieve('reanalysis-era5-land', { 'variable': [ '2m_temperature'] , 'year': year, 'month' : month, 'day': day_list, 'time': time_list, 'format': 'grib', 'area': [ 20.43, 97.96, 5.77, 105.22, ], }, f'{year}_{month}_hourly_2m_temp_TH.grib') ``` Direct file output from API is in ```.grib``` format, to make it easy for further analysis work, I have converted it to ```.parquet``` format.
To convert GRIB format to pandas dataframe, you can use [xrray](https://github.com/pydata/xarray) and [cfgrib](https://github.com/ecmwf/cfgrib) library to help as below example snippet of code. ``` python import xarray as xr import cfgrib ds = xr.open_dataset('2022_12_31_hourly_2m_temp_TH.grib', engine='cfgrib') df = ds.to_dataframe().reset_index() ``` ## Licensing [Climate Data Store Product Licensing](https://cds.climate.copernicus.eu/api/v2/terms/static/licence-to-use-copernicus-products.pdf) ## Citation - This data was generated using **Copernicus Climate Change Service** information and
contains modified **Copernicus Climate Change Service** information on 1999/Dec/31 - 2023/May/08 data period - Muñoz Sabater, J. (2019): ERA5-Land hourly data from 1950 to present.
Copernicus Climate Change Service (C3S) Climate Data Store (CDS).
DOI: [10.24381/cds.e2161bac](https://cds.climate.copernicus.eu/cdsapp#!/dataset/10.24381/cds.e2161bac?tab=overview) (Accessed on 13-May-2023) - Copernicus Climate Change Service (C3S) (2022): ERA5-Land hourly data from 1950 to present.
Copernicus Climate Change Service (C3S) Climate Data Store (CDS).
DOI: [10.24381/cds.e2161bac](https://cds.climate.copernicus.eu/cdsapp#!/dataset/10.24381/cds.e2161bac?tab=overview) (Accessed on 13-May-2023)