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On Entropy Regularized Path Integral Control for Trajectory Optimization

机译:关于轨迹优化的熵正则路径积分控制

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摘要

In this article, we present a generalized view on Path Integral Control (PIC) methods. PIC refers to a particular class of policy search methods that are closely tied to the setting of Linearly Solvable Optimal Control (LSOC), a restricted subclass of nonlinear Stochastic Optimal Control (SOC) problems. This class is unique in the sense that it can be solved explicitly yielding a formal optimal state trajectory distribution. In this contribution, we first review the PIC theory and discuss related algorithms tailored to policy search in general. We are able to identify a generic design strategy that relies on the existence of an optimal state trajectory distribution and finds a parametric policy by minimizing the cross-entropy between the optimal and a state trajectory distribution parametrized by a parametric stochastic policy. Inspired by this observation, we then aim to formulate a SOC problem that shares traits with the LSOC setting yet that covers a less restrictive class of problem formulations. We refer to this SOC problem as Entropy Regularized Trajectory Optimization. The problem is closely related to the Entropy Regularized Stochastic Optimal Control setting which is often addressed lately by the Reinforcement Learning (RL) community. We analyze the theoretical convergence behavior of the theoretical state trajectory distribution sequence and draw connections with stochastic search methods tailored to classic optimization problems. Finally we derive explicit updates and compare the implied Entropy Regularized PIC with earlier work in the context of both PIC and RL for derivative-free trajectory optimization.
机译:在本文中,我们在路径积分控制(PIC)方法上呈现了一般性视图。 PIC指的是一类特定类别的策略搜索方法,与线性可溶性最优控制(LSOC)的设置密切相关,是非线性随机最佳控制(SOC)问题的受限制子类。此类在意义上是独一无二的,即它可以明确解决正式的最佳状态轨迹分布。在这一贡献中,我们首先审查了PIC理论,并讨论了一般策略搜索量身定制的相关算法。我们能够识别依赖于最佳状态轨迹分布的存在的通用设计策略,并且通过最小化由参数随机策略参数化的最佳和状态轨迹分布之间的跨熵来找到参数策略。灵感来自这种观察,我们旨在制定一个SOC问题,其中与LSOC设置共享特征,涵盖了较少限制的问题制剂类别。我们将此SOC问题称为熵正则轨迹优化。问题与熵正则化随机最佳控制设置密切相关,这通常由加强学习(RL)社区最近解决。我们分析了理论轨迹分布序列的理论会聚行为,并用针对经典优化问题定制的随机搜索方法绘制连接。最后,我们派生了明确的更新,并将隐含的熵正常化图片与早期的工作相比,在PIC和RL的上下文中,无需衍生轨迹优化。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2020(22),10
  • 年度 2020
  • 页码 1120
  • 总页数 30
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:熵推断;熵正则化;随机搜索方法;路径积分控制;

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