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| \appendix | |
| \chapter{Further implemented dynamical systems} | |
| \label{ch_Ap_Dyna} | |
| \begin{enumerate} | |
| \item \textbf{Chen} \cite{Chen1999}: | |
| \begin{equation} | |
| \label{eq_8_Chen} | |
| \begin{aligned} | |
| \dot x &= a\, (y - x) \\ | |
| \dot y &= x \,(\beta - a) - xz + \beta y \\ | |
| \dot z &= x y -b z | |
| \end{aligned} | |
| \end{equation} | |
| \item \textbf{Lu} \cite{Lu2002}: | |
| \begin{equation} | |
| \label{eq_9_Lu} | |
| \begin{aligned} | |
| \dot x &= a \, (y -x) \\ | |
| \dot y &= \beta y -x z \\ | |
| \dot z &= x y - b z | |
| \end{aligned} | |
| \end{equation} | |
| \item \textbf{Van der Pol} \cite{VanderPol}: | |
| \begin{equation} | |
| \label{eq_14_VDP} | |
| \begin{aligned} | |
| \dot x &= y \\ | |
| \dot y &= y \beta\,(1-x^2) -x | |
| \end{aligned} | |
| \end{equation} | |
| \end{enumerate} | |
| \chapter{Some basics about chaotic systems} | |
| \label{ch_Ap_Chaotic} | |
| Since | |
| Chaotic systems are the height | |
| of intricacy when considering dynamical systems. | |
| The reason why the term intricacy was chosen | |
| instead of complexity is that chaotic systems can be, but are not necessarily | |
| complex. For the relation between complex and | |
| chaotic the reader is referred to \cite{Rickles2007}. | |
| The mentioned intricacy of chaotic systems shall be explained by | |
| reviewing two reasons. First, | |
| chaotic systems are sensitive to their initial conditions. | |
| To understand this, imagine we want to solve an \gls{ode}. In order to solve any | |
| differential | |
| equation, the initial condition or starting state must be known. Meaning, that the | |
| solution to the \gls{ode} at the very first initial step, from where the | |
| remaining interval is solved, must be identified beforehand. | |
| One might believe, a starting point, which is not guessed unreasonably off, | |
| should suffice to infer the system's future dynamics.\newline | |
| This is | |
| an educated attempt, however, it is not true for systems that exhibit | |
| sensitivity to initial conditions. These systems amplify any | |
| perturbation or deviation exponentially | |
| as time increases. From this it can be concluded | |
| that even in case the initial value would be accurate to, e.g., 10 decimal places, | |
| still after some time, the outcome can not be trusted anymore. | |
| Visually | |
| this can be comprehended by thinking of initial conditions | |
| as locations in space. Let us picture two points with two initial conditions | |
| that are selected to be next to each other. Only by zooming in multiple times, | |
| a small spatial deviation should be perceivable. | |
| As the time changes, the points will leave the location defined through the initial condition. \newline | |
| With | |
| chaotic systems in mind, both initially neighboring | |
| points will diverge exponentially fast from each other. | |
| As a consequence of the initial condition not being | |
| known with infinite precision, the initial microscopic | |
| errors become macroscopic with increasing time. Microscopic mistakes | |
| might be considered to be imperceptible and thus have no impact | |
| on the outcome, which would be worth to be mentioned. | |
| Macroscopic mistakes on the other hand are visible. Depending on | |
| accuracy demands solutions might be or might not be accepted. | |
| However, as time continues further, the results eventually | |
| will become completely unusable and diverge from the actual output on a macroscopic scale.\newline | |
| The second reason, why chaotic systems are very difficult | |
| to cope with, is the lack of a clear definition. It can be | |
| argued that even visually, it is not always possible to | |
| unambiguously identify a chaotic system. The idea | |
| is that at some time step, a chaotic system appears to | |
| be evolving randomly over time. The question then arises, | |
| how is someone supposed to distinguish between something which | |
| is indeed evolving randomly and something which only appears | |
| to be random. The follow-up question most likely is going to be, | |
| what is the difference between chaos and randomness, or | |
| even if there is a difference. \newline | |
| Maybe randomness itself is only | |
| a lack of knowledge, e.g., the movement of gas particles | |
| can be considered to be chaotic or random. If the | |
| velocity and spatial position of each molecule are | |
| trackable, the concept of temperature is made | |
| redundant. Gibbs only invented the concept of temperature | |
| in order to be able to make some qualitative statements | |
| about a system \cite{Argyris2017}. | |
| A system that can not be described microscopically. | |
| Here the question arises if the movement of the molecules | |
| would be random, how is it possible that every time | |
| some amount of heat is introduced into a system, the temperature | |
| changes in one direction. If a random microscale system | |
| always tends to go in one direction within a macroscale view, | |
| a clear definition of randomness is required. \newline | |
| Laplace once said if the initial condition | |
| (space and velocity) of each atom would be known, | |
| the entire future | |
| could be calculated. In other words, if a system is | |
| build on equations, which is a deterministic way | |
| to describe an event, the outcome should just | |
| depend on the values of the variables. | |
| Thus, the future, for as long as it is desired could be predicted | |
| or computed exactly. To briefly summarize this conversion, | |
| Albert Einstein once remarked that God would not play dice. Nils | |
| Bohr replied that it | |
| would be presumptuous of us human beings to prescribe to the Almighty | |
| how he is to take his decisions. A more in-depth introduction to | |
| this subject is provided by \cite{Argyris2017}. | |
| Nevertheless, by doing literature research, one way to | |
| visually distinguish between | |
| randomness and chaos was found \cite{Boeing2016}. | |
| Yet, in \cite{Boeing2016} the method was only | |
| deployed on a logistic map. Hence, further research | |
| is required here. \newline | |
| As explained, a clear definition of chaos does not exist. | |
| However, some parts of definitions do occur regularly, e.g., | |
| the already mentioned \glsfirst{sdic}. Other definition parts are the following: Chaotic | |
| motion is \textbf{aperiodic} and based on a \textbf{deterministic} system. | |
| An aperiodic system is not repeating any | |
| previous \textbf{trajectory} and a deterministic system is | |
| described by governing equations. A trajectory is the evolution | |
| of a dynamical system over time. For instance, a dynamical system | |
| consisting of 3 variables is denoted as a 3-dimensional dynamical system. | |
| Each of the variables has its own representation axis. | |
| Assuming these | |
| 3 variables capture space, motion in the x-,y- and z-direction | |
| is possible. For each point in a defined time range, there is one set of x, y and z values, which fully describes the output of the dynamical system or the position at a chosen time point. | |
| Simply put, the trajectory is the movement | |
| or change of the variables of the differential equation over time. Usually, the | |
| trajectory is displayed in the phase space, i.e., the axis represents the state or values of the variables of a dynamical system. An example can be observed in section \ref{subsec_1_1_3_first_CNMc}. \newline | |
| One misconception which is often believed \cite{Taylor2010} | |
| and found, e.g., in | |
| Wikipedia \cite{Wiki_Chaos} is that | |
| strange attractors would only appear as a consequence of | |
| chaos. Yet, Grebogi et al. \cite{Grebogi1984} proved | |
| otherwise. According to | |
| \cite{Boeing2016,Taylor2010} strange attractors exhibit | |
| self-similarity. This can be understood visually by imaging any shape | |
| of a trajectory. Now by zooming in or out, the exact same shape | |
| is found again. The amount of zooming in or out and consequently | |
| changing the view scale, will not change the perceived | |
| shape of the trajectory. Self-similarity happens to be | |
| one of the fundamental properties of a geometry | |
| in order to be called a fractal \cite{Taylor2010}. | |
| In case one believes, | |
| strange attractors would always be chaotic and knows that by definition strange attractors phase | |
| space is self-similar, then | |
| something further misleading is concluded. | |
| Namely, if a geometry is turned out not only | |
| to be self-similar but also to be a fractal, this | |
| would demand interpreting every fractal to be | |
| chaotic. \newline | |
| To refute this, consider the Gophy | |
| attractor \cite{Grebogi1984}. | |
| It exhibits the described self-similarity, | |
| moreover, it is a fractal, and it is also a | |
| strange attractor. However, the Gophy | |
| attractor is not chaotic. The reason is found, when | |
| calculating the Lyapunov exponent, which is negative | |
| \cite{Taylor2010}. Latter tells us that two neighboring | |
| trajectories are not separating exponentially fast | |
| from each other. Thus, it does not obey the | |
| sensitive dependence | |
| of initial conditions requirement and is | |
| regarded to be non-chaotic. The key messages are | |
| that a chaotic attractor surely is a strange | |
| attractor and a strange attractor is not necessarily | |
| chaotic. A strange attractor refers to a fractal | |
| geometry in which chaotic behavior may | |
| or may not exist \cite{Taylor2010}. | |
| Having acquired the knowledge that strange attractors | |
| can occur in chaotic systems and form a fractal, | |
| one might infer another question. If a chaotic | |
| strange attractor always generates a geometry, which | |
| stays constant when scaled, can chaos be | |
| regarded to be random?\newline | |
| This question will not be discussed in detail here, but for the sake of completeness, the 3 known types of nonstrange attractors | |
| shall be mentioned. These are | |
| the fixed point attractor, the limit cycle attractor, and the | |
| torus attractor \cite{Taylor2010}. | |
| A fixed point attractor is one point in the phase space, which attracts or pulls nearby trajectories to itself. | |
| Inside the fix-point attractor, there is no motion, meaning | |
| the derivative of the differential equation is zero. | |
| In simpler words, | |
| once the trajectory runs into a fix-point, the trajectory ends there. | |
| This is because no change over time can be found here. | |
| A limit cycle can be expressed as an endlessly repeating loop, e.g. in the shape of a circle. | |
| The trajectory can start at | |
| any given initial condition, still, it can go through a place in the phase space, from where the trajectory is continued as an infinitely | |
| repeating loop. | |
| For a visualization of the latter and the tours, as well more | |
| detail the reader is referred to \cite{Argyris2017, Kutz2022, Strogatz2019, Taylor2010}. |