Learnable & Interpretable Model Combination in Dynamical Systems Modeling
- URL: http://arxiv.org/abs/2406.08093v2
- Date: Fri, 31 Jan 2025 09:07:30 GMT
- Title: Learnable & Interpretable Model Combination in Dynamical Systems Modeling
- Authors: Tobias Thummerer, Lars Mikelsons,
- Abstract summary: This work briefly discusses which types of model are usually combined in dynamical systems modeling.
We propose a class of models that is capable of expressing mixed algebraic, discrete, and differential equation-based models.
Finally, we propose a new wildcard architecture that is capable of describing arbitrary combinations of models in an easy-to-interpret fashion.
- Score: 0.0
- License:
- Abstract: During modeling of dynamical systems, often two or more model architectures are combined to obtain a more powerful or efficient model regarding a specific application area. This covers the combination of multiple machine learning architectures, as well as hybrid models, i.e., the combination of physical simulation models and machine learning. In this work, we briefly discuss which types of model are usually combined in dynamical systems modeling and propose a class of models that is capable of expressing mixed algebraic, discrete, and differential equation-based models. Further, we examine different established, as well as new ways of combining these models from the point of view of system theory and highlight two challenges - algebraic loops and local event functions in discontinuous models - that require a special approach. Finally, we propose a new wildcard architecture that is capable of describing arbitrary combinations of models in an easy-to-interpret fashion that can be learned as part of a gradient-based optimization procedure. In a final experiment, different combination architectures between two models are learned, interpreted, and compared using the methodology and software implementation provided.
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