2023
DOI: 10.1145/3567591
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Constructing Neural Network Based Models for Simulating Dynamical Systems

Abstract: Dynamical systems see widespread use in natural sciences like physics, biology, chemistry, as well as engineering disciplines such as circuit analysis, computational fluid dynamics, and control. For simple systems, the differential equations governing the dynamics can be derived by applying fundamental physical laws. However, for more complex systems, this approach becomes exceedingly difficult. Data-driven modeling is an alternative paradigm that seeks to learn an approximation of the dynamics of a system usi… Show more

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Cited by 43 publications
(21 citation statements)
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“…258 Directsolution models estimate the state at a specific time without integration, while time-stepper models advance it forward in time at collocation points. 259 The flexibility of the underlying structure allows species to move from spectator to consumable status. 260 A chemical reaction neural net (CRNN) is a type of neural ODE model which incorporates fundamental physical laws, such as the law of mass action and the Arrhenius law, into its structure.…”
Section: H C C H C C C C Cos( )( )mentioning
confidence: 99%
“…258 Directsolution models estimate the state at a specific time without integration, while time-stepper models advance it forward in time at collocation points. 259 The flexibility of the underlying structure allows species to move from spectator to consumable status. 260 A chemical reaction neural net (CRNN) is a type of neural ODE model which incorporates fundamental physical laws, such as the law of mass action and the Arrhenius law, into its structure.…”
Section: H C C H C C C C Cos( )( )mentioning
confidence: 99%
“…Anomalous trajectories require further analysis that cannot be provided by the deep mixture of experts network. Here, it is more natural to model the measurement process as a continuous differential equation [47,48]. To this end, each future predicted trajectory y is assumed to be approximated by the following reservoir computing network [49]…”
Section: Trajectory Intention Predictionmentioning
confidence: 99%
“…Other ideas include synthetic data generation by simulation of a physics-based model to amplify a machine learning model input domain [13]; formulating a hybrid loss function for the learning process and penalizing the model for deviation from physical constraints [2]; pre-training a machine learning model using physics-based simulation data and fine-tuning based on a limited number of observations [14]; customizing the topology of a machine learning model by adding intermediate physics informed components [15]; designing the structure of a machine learning model using physical laws [16]; uncertainty reduction in machine learning using physics [17]; and, integrating machine learning models with first principle physical laws for solving partial differential equations [18]. A comprehensive discussion of these approaches can be found in [1,2,19].…”
Section: Introductionmentioning
confidence: 99%