2020
DOI: 10.48550/arxiv.2003.01891
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Adaptive Online Distributed Optimal Control of Very-Large-Scale Robotic Systems

Abstract: This paper presents an adaptive online distributed optimal control approach that is applicable to optimal planning for very-large-scale robotics systems in highly uncertain environments. This approach is developed based on the optimal mass transport theory. It is also viewed as an online reinforcement learning and approximate dynamic programming approach in the Wasserstein-GMM space, where a novel value functional is defined based on the probability density functions of robots and the time-varying obstacle map… Show more

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