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Multiscale abstraction, planning and control using diffusion wavelets for stochastic optimal control problems

机译:使用扩散小波的多尺度抽象,规划和控制,用于随机最优控制问题

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This work presents a multiscale framework to solve a class of stochastic optimal control problems in the context of robot motion planning and control in a complex environment. In order to handle complications resulting from a large decision space and complex environmental geometry, two key concepts are adopted: (a) a diffusion wavelet representation of the Markov chain for hierarchical abstraction of the state space; and (b) a desirability function-based representation of the Markov decision process (MDP) to efficiently calculate the optimal policy. In the proposed framework, a global plan that compressively takes into account the long time/length-scale state transition is first obtained by approximately solving an MDP whose desirability function is represented by coarse scale bases in the hierarchical abstraction. Then, a detailed local plan is computed by solving an MDP that considers wavelet bases associated with a focused region of the state space, guided by the global plan. The resulting multiscale plan is utilized to finally compute a continuous-time optimal control policy within a receding horizon implementation. Two numerical examples are presented to demonstrate the applicability and validity of the proposed approach.
机译:这项工作提出了一个多尺度框架,以解决复杂环境中机器人运动计划和控制情况下的一类随机最优控制问题。为了处理大决策空间和复杂环境几何导致的复杂性,采用了两个关键概念:(a)马尔可夫链的扩散小波表示,用于状态空间的层次抽象; (b)马尔可夫决策过程(MDP)的基于需求函数的表示形式,可以有效地计算最佳策略。在提出的框架中,首先通过近似求解一个MDP来获得可压缩地考虑到长时间/长度尺度状态转换的全局计划,该MDP的需求函数由层次抽象中的粗尺度基数表示。然后,通过求解MDP来计算详细的局部计划,该MDP考虑在全局计划的指导下与状态空间的聚焦区域关联的小波基。由此产生的多尺度计划可用于最终计算后退范围内的连续时间最优控制策略。给出两个数值例子,以证明所提方法的适用性和有效性。

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