Learning Optimal Controllers for Linear Systems With Multiplicative Noise via Policy Gradient

IEEE Transactions on Automatic Control(2021)

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摘要
The linear quadratic regulator (LQR) problem has reemerged as an important theoretical benchmark for reinforcement learning-based control of complex dynamical systems with continuous state and action spaces. In contrast with nearly all recent work in this area, we consider multiplicative noise models, which are increasingly relevant because they explicitly incorporate inherent uncertainty and vari...
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关键词
Robustness,Stability analysis,Convergence,Uncertainty,Covariance matrices,Additive noise,Stochastic processes
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