SYLGOCJan 9, 2023

Physics-Informed Kernel Embeddings: Integrating Prior System Knowledge with Data-Driven Control

arXiv:2301.03565v18 citationsh-index: 53
Originality Incremental advance
AI Analysis

This work addresses sample inefficiency in control systems for applications like robotics and aerospace, but it is incremental as it builds on existing kernel methods.

The authors tackled the problem of excessive sample requirements in data-driven control by integrating prior system knowledge into kernel embeddings, resulting in improved sample efficiency and out-of-sample generalization over purely data-driven baselines.

Data-driven control algorithms use observations of system dynamics to construct an implicit model for the purpose of control. However, in practice, data-driven techniques often require excessive sample sizes, which may be infeasible in real-world scenarios where only limited observations of the system are available. Furthermore, purely data-driven methods often neglect useful a priori knowledge, such as approximate models of the system dynamics. We present a method to incorporate such prior knowledge into data-driven control algorithms using kernel embeddings, a nonparametric machine learning technique based in the theory of reproducing kernel Hilbert spaces. Our proposed approach incorporates prior knowledge of the system dynamics as a bias term in the kernel learning problem. We formulate the biased learning problem as a least-squares problem with a regularization term that is informed by the dynamics, that has an efficiently computable, closed-form solution. Through numerical experiments, we empirically demonstrate the improved sample efficiency and out-of-sample generalization of our approach over a purely data-driven baseline. We demonstrate an application of our method to control through a target tracking problem with nonholonomic dynamics, and on spring-mass-damper and F-16 aircraft state prediction tasks.

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