Learning Physical Laws: The Case Of Micron Size Particles In Dielectric Fluid

2020 AMERICAN CONTROL CONFERENCE (ACC)(2020)

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摘要
We address the problem of learning laws governing the behavior of physical systems. As a use case we choose the discovery of the dynamics of micron-scale chiplets in dielectric fluid whose motion is controlled by a set of electric potential. We use the port-Hamiltonian formalism as a high level model structure that is continuously refined based on our understanding of the physical process. In addition, we use machine learning inspired models as low level representations. Representation structure is key in learning generalizable models, as shown by the learning results.
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关键词
physical process,machine learning,low level representations,representation structure,generalizable models,learning results,physical laws,micron size particles,dielectric fluid,physical systems,micron-scale chiplets,electric potential,port-Hamiltonian formalism,high level model structure
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