Synthesis of Stabilizing Recurrent Equilibrium Network Controllers

arxiv(2022)

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摘要
We propose a parameterization of a nonlinear dynamic controller based on the recurrent equilibrium network, a generalization of the recurrent neural network. We derive constraints on the parameterization under which the controller guarantees exponential stability of a partially observed dynamical system with sector bounded nonlinearities. Finally, we present a method to synthesize this controller using projected policy gradient methods to maximize a reward function with arbitrary structure. The projection step involves the solution of convex optimization problems. We demonstrate the proposed method with simulated examples of controlling a nonlinear inverted pendulum.
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关键词
convex optimization,exponential stability,nonlinear dynamic controller,nonlinear inverted pendulum,parameterization,partially observed dynamical system,projected policy gradient methods,recurrent neural network,reward function,sector bounded nonlinearities,stabilizing recurrent equilibrium network controllers
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