2024
DOI: 10.1609/aaai.v38i19.30169
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Physics-Informed Representation and Learning: Control and Risk Quantification

Zhuoyuan Wang,
Reece Keller,
Xiyu Deng
et al.

Abstract: Optimal and safety-critical control are fundamental problems for stochastic systems, and are widely considered in real-world scenarios such as robotic manipulation and autonomous driving. In this paper, we consider the problem of efficiently finding optimal and safe control for high-dimensional systems. Specifically, we propose to use dimensionality reduction techniques from a comparison theorem for stochastic differential equations together with a generalizable physics-informed neural network to estimate the … Show more

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