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Distributionally Robust Risk Map for Learning-Based Motion Planning and Control: A Semidefinite Programming Approach

机译:基于学习的运动规划与控制的分布鲁棒风险图:一种半定规划方法

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摘要

In this article, we propose a novel safety specification tool, called the distributionally robust risk map (DR-risk map), for a mobile robot operating in a learning-enabled environment. Given the robot's position, the map aims to reliably assess the conditional value-at-risk (CVaR) of collision with obstacles whose movements are inferred by Gaussian process regression (GPR). Unfortunately, the inferred distribution is subject to errors, making it difficult to accurately evaluate the CVaR of collision. To overcome this challenge, our tool measures the risk under the worst-case distribution in a so-called ambiguity set that characterizes allowable distribution errors. To resolve the infinite-dimensionality issue inherent in the construction of the DR-risk map, we derive a tractable semidefinite programming formulation that provides an upper bound of the risk, exploiting techniques from modern distributionally robust optimization. As a concrete application for motion planning, a distributionally robust RRT* algorithm is considered using the risk map that addresses distribution errors caused by GPR. Furthermore, a motion control method is devised using the DR-risk map in a learning-based model predictive control (MPC) formulation. In particular, a neural network approximation of the risk map is proposed to reduce the computational cost in solving the MPC problem. The performance and utility of the proposed risk map are demonstrated through simulation studies that show its ability to ensure the safety of mobile robots despite learning errors.
机译:在本文中,我们提出了一种新的安全规范工具,称为分布鲁棒风险图(DR-risk map),用于在学习环境中运行的移动机器人。给定机器人的位置,该地图旨在可靠地评估与障碍物碰撞的条件风险值(CVaR),这些障碍物的运动是由高斯过程回归(GPR)推断的。不幸的是,推断的分布容易出错,因此很难准确评估碰撞的CVaR。为了克服这一挑战,我们的工具在所谓的模糊性集中测量最坏情况分布下的风险,该模糊集表征了允许的分布误差。为了解决 DR 风险图构建中固有的无限维问题,我们推导了一个易于处理的半定规划公式,该公式利用了现代分布鲁棒优化的技术,提供了风险的上限。作为运动规划的具体应用,考虑使用风险图解决 GPR 引起的分布误差的分布鲁棒 RRT* 算法。此外,在基于学习的模型预测控制 (MPC) 公式中使用 DR-风险图设计了一种运动控制方法。具体而言,该文提出了一种风险图的神经网络逼近,以降低求解MPC问题的计算成本。通过仿真研究证明了所提出的风险图的性能和实用性,这些仿真研究表明,尽管存在学习错误,但其仍能够确保移动机器人的安全。

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