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Stabilizing Neural Control Using Self-Learned Almost Lyapunov Critics

Ya-Chien Chang, Sicun Gao

Year
2021
Citations
34

Abstract

The lack of stability guarantee restricts the practical use of learning-based methods in core control problems in robotics. We develop new methods for learning neural control policies and neural Lyapunov critic functions in the modelfree reinforcement learning (RL) setting. We use sample-based approaches and the Almost Lyapunov function conditions to estimate the region of attraction and invariance properties through the learned Lyapunov critic functions. The methods enhance stability of neural controllers for various nonlinear systems including automobile and quadrotor control.

Keywords

Lyapunov functionLyapunov redesignControl theory (sociology)RoboticsStability (learning theory)Computer scienceReinforcement learningControl-Lyapunov functionArtificial neural networkNonlinear system

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