Model-Based Reinforcement Learning via Stochastic Hybrid Models

Hany Abdulsamad;Jan Peters
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Abstract

Optimal control of general nonlinear systems is a central challenge in automation. Enabled by powerful function approximators, data-driven approaches to control have recently successfully tackled challenging applications. However, such methods often obscure the structure of dynamics and control behind black-box over-parameterized representations, thus limiting our ability to understand closed-loop behavior. This article adopts a hybrid-system view of nonlinear modeling and control that lends an explicit hierarchical structure to the problem and breaks down complex dynamics into simpler localized units. We consider a sequence modeling paradigm that captures the temporal structure of the data and derive an expectation-maximization (EM) algorithm that automatically decomposes nonlinear dynamics into stochastic piecewise affine models with nonlinear transition boundaries. Furthermore, we show that these time-series models naturally admit a closed-loop extension that we use to extract local polynomial feedback controllers from nonlinear experts via behavioral cloning. Finally, we introduce a novel hybrid relative entropy policy search (Hb-REPS) technique that incorporates the hierarchical nature of hybrid models and optimizes a set of time-invariant piecewise feedback controllers derived from a piecewise polynomial approximation of a global state-value function.
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基于随机混合模型的强化学习
一般非线性系统的最优控制是自动化中的一个核心挑战。在强大的函数逼近器的支持下,数据驱动的控制方法最近成功地解决了具有挑战性的应用。然而,这种方法往往掩盖了参数化表示黑匣子背后的动力学和控制结构,从而限制了我们理解闭环行为的能力。本文采用了非线性建模和控制的混合系统观点,为问题提供了明确的层次结构,并将复杂的动力学分解为更简单的局部单元。我们考虑了一种序列建模范式,该范式捕捉数据的时间结构,并推导出一种期望最大化(EM)算法,该算法自动将非线性动力学分解为具有非线性过渡边界的随机分段仿射模型。此外,我们证明了这些时间序列模型自然地允许闭环扩展,我们使用它通过行为克隆从非线性专家那里提取局部多项式反馈控制器。最后,我们介绍了一种新的混合相对熵策略搜索(Hb REPS)技术,该技术结合了混合模型的层次性,并优化了一组从全局状态值函数的分段多项式近似导出的时不变分段反馈控制器。
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