基于强化学习的自适应风险敏感路径积分模型预测控制

Hyung-Jin Yoon, Chuyuan Tao, Hunmin Kim, N. Hovakimyan, P. Voulgaris
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引用次数: 0

摘要

我们提出了一个强化学习框架,其中智能体使用内部标称模型进行随机模型预测控制(MPC),同时补偿干扰。我们的工作建立在现有的风险感知最优控制随机微分方程(SDEs)的基础上,旨在处理这种干扰。然而,在风险感知最优控制中,名义SDE的风险敏感性和噪声强度往往是启发式选择的。在提出的框架中,风险承担政策决定了MPC的行为是寻求风险(勘探)还是规避风险(开发)。具体而言,我们采用了风险感知路径积分控制,该控制可以作为蒙特卡罗(MC)采样实现,并使用GPU进行快速并行模拟。由于其实时计算能力,MPC的MC采样实现在机器人应用中取得了成功。在有干扰的仿真环境中,该框架适应了噪声模型和风险敏感性,优于标准模型预测路径积分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Risk Sensitive Path Integral for Model Predictive Control via Reinforcement Learning
We propose a reinforcement learning framework where an agent uses an internal nominal model for stochastic model predictive control (MPC) while compensating for a disturbance. Our work builds on the existing risk-aware optimal control with stochastic differential equations (SDEs) that aims to deal with such disturbance. However, the risk sensitivity and the noise strength of the nominal SDE in the riskaware optimal control are often heuristically chosen. In the proposed framework, the risk-taking policy determines the behavior of the MPC to be risk-seeking (exploration) or risk-averse (exploitation). Specifically, we employ the risk-aware path integral control that can be implemented as a Monte-Carlo (MC) sampling with fast parallel simulations using a GPU. The MC sampling implementations of the MPC have been successful in robotic applications due to their real-time computation capability. The proposed framework that adapts the noise model and the risk sensitivity outperforms the standard model predictive path integral in simulation environments that have disturbances.
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