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Deploying Strategy of Tethered Space Robot with Approximate Dynamic Programming

机译:具有近似动态规划的系绳空间机器人部署策略

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This paper concerns the deployment of a tethered space robot with only tension control under the optimal policy, which is generated from Q-learning iteration with fuzzy approximation. The Q-learning iteration gives rise to a feasible sequence of control input, that does not have to well consider the constrained tension, and the optimal policy is generated offline and runs onboard with the low computational requirements. Underactuated dynamics is transformed into the specified reduced-order system, which is uniformly ultimately bounded based on the analysis of the motion on the nonlinear sliding surface. Continuous inputs are generated from the interpolation strategy of discrete Q-learning iteration, which owns a better dynamic and steady-state performance. The proposed method is high real-time, effective and efficient, which has been verified by numerical simulations.
机译:本文涉及仅在最佳策略下展开具有张力控制的系绳空间机器人,这是从Q-Learning迭代产生的,从而具有模糊近似。 Q-Learning迭代产生了可行的控制输入序列,不必很好地考虑受限的张力,并且最佳策略是在脱机中生成的,并且使用低计算要求运行。欠施动力变换成指定的减少阶系统,基于对非线性滑动表面的运动的分析均匀地界定。连续输入是从离散Q学习迭代的插值策略生成的,这拥有更好的动态和稳态性能。所提出的方法是高实时,有效且有效的,这已经通过数值模拟验证。

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