Elliptical Slice Sampling for Probabilistic Verification of Stochastic Systems with Signal Temporal Logic Specifications

Guy Scher, Sadra Sadraddini, Russ Tedrake, H. Kress-Gazit
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引用次数: 3

Abstract

Autonomous robots typically incorporate complex sensors in their decision-making and control loops. These sensors, such as cameras and lidars, have imperfections in their sensing and are influenced by environmental conditions. In this paper, we present a method for probabilistic verification of linearizable systems with Gaussian and Gaussian mixture noise models (e.g. from perception modules, machine learning components). We compute the probabilities of task satisfaction under Signal Temporal Logic (STL) specifications, using its robustness semantics, with a Markov Chain Monte-Carlo slice sampler. As opposed to other techniques, our method avoids over-approximations and double-counting of failure events. Central to our approach is a method for efficient and rejection-free sampling of signals from a Gaussian distribution that satisfy or violate a given STL formula. We show illustrative examples from applications in robot motion planning.
具有信号时序逻辑规范的随机系统的概率验证椭圆切片抽样
自主机器人通常在其决策和控制回路中包含复杂的传感器。这些传感器,如相机和激光雷达,在它们的传感有缺陷,并受到环境条件的影响。在本文中,我们提出了一种高斯和高斯混合噪声模型(例如来自感知模块,机器学习组件)的线性系统的概率验证方法。利用信号时序逻辑(STL)规范的鲁棒性语义,利用马尔可夫链蒙特卡罗切片采样器计算任务满足的概率。与其他技术相反,我们的方法避免了过度近似和重复计算故障事件。我们方法的核心是对满足或违反给定STL公式的高斯分布的信号进行有效和无抑制采样的方法。我们展示了在机器人运动规划中的应用实例。
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