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Safe Reinforcement Learning Using Wasserstein Distributionally Robust MPC and Chance Constraint

Arash Bahari Kordabad, Rafał Wiśniewski, Sébastien Gros

Year
2022
Citations
14
Access
Open access

Abstract

In this paper, we address the chance-constrained safe Reinforcement Learning (RL) problem using the function approximators based on Stochastic Model Predictive Control (SMPC) and Distributionally Robust Model Predictive Control (DRMPC). We use Conditional Value at Risk (CVaR) to measure the probability of constraint violation and safety. In order to provide a safe policy by construction, we first propose using parameterized nonlinear DRMPC at each time step. DRMPC optimizes a finite-horizon cost function subject to the worst-case constraint violation in an ambiguity set. We use a statistical ball around the empirical distribution with radius measured by the Wasserstein metric as the ambiguity set. Unlike the sample average approximation SMPC, DRMPC provides a probabilistic guarantee of the out of sample risk and requires lower samples from the disturbance. Then the Q-learning method is used to optimize the parameters in the DRMPC to achieve the best closed-loop performance. Wheeled Mobile Robot (WMR) path planning with obstacle avoidance will be considered to illustrate the efficiency of the proposed method.

Keywords

Computer scienceWasserstein metricMathematical optimizationReinforcement learningProbabilistic logicModel predictive controlParameterized complexityBellman equationMotion planningAmbiguity

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