Identifying Physical Law of Hamiltonian Systems via Meta-Learning
- URL: http://arxiv.org/abs/2102.11544v1
- Date: Tue, 23 Feb 2021 08:16:13 GMT
- Title: Identifying Physical Law of Hamiltonian Systems via Meta-Learning
- Authors: Seungjun Lee, Haesang Yang, Woojae Seong
- Abstract summary: Hamiltonian mechanics is an effective tool to represent many physical processes.
We show that a well meta-trained learner can identify the shared representation of the Hamiltonian.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Hamiltonian mechanics is an effective tool to represent many physical
processes with concise yet well-generalized mathematical expressions. A
well-modeled Hamiltonian makes it easy for researchers to analyze and forecast
many related phenomena that are governed by the same physical law. However, in
general, identifying a functional or shared expression of the Hamiltonian is
very difficult. It requires carefully designed experiments and the researcher's
insight that comes from years of experience. We propose that meta-learning
algorithms can be potentially powerful data-driven tools for identifying the
physical law governing Hamiltonian systems without any mathematical assumptions
on the representation, but with observations from a set of systems governed by
the same physical law. We show that a well meta-trained learner can identify
the shared representation of the Hamiltonian by evaluating our method on
several types of physical systems with various experimental settings.
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