2023
DOI: 10.48550/arxiv.2301.12759
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Passivizing learned policies and learning passive policies with virtual energy tanks in robotics

Abstract: Within a robotic context, we merge the techniques of passivity-based control (PBC) and reinforcement learning (RL) with the goal of eliminating some of their reciprocal weaknesses, as well as inducing novel promising features in the resulting framework. We frame our contribution in a scenario where PBC is implemented by means of virtual energy tanks, a control technique developed to achieve closed-loop passivity for any arbitrary control input. Albeit the latter result is heavily used, we discuss why its pract… Show more

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