未知环境下宽度优先耦合传感器配置与路径规划

Chase St. Laurent, Raghvendra V. Cowlagi
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引用次数: 0

摘要

我们提出了一种宽度优先的传感器配置策略,以找到接近最佳的位置和传感器视野(FoV)。该策略将传感器配置过程与智能体在包含威胁的未知静态环境中规划路径的决策任务直接耦合。该传感器配置与路径规划(CSCP)耦合策略迭代地使用高斯过程回归构造威胁场估计,并找到具有最小威胁暴露的候选最优路径。该策略利用独特的任务驱动信息增益(TDIG)度量,在最大化时产生传感器配置。由于问题的非凸和非次模性质,我们提出了TDIG度量优化的近似。最后,我们讨论了宽度优先策略与标准、深度优先策略以及传统信息最大化策略的性能对比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Breadth-First Coupled Sensor Configuration and Path-Planning in Unknown Environments
We present a breadth-first sensor configuration strategy to find near-optimal placement and sensor field of view (FoV). The strategy couples the sensor configuration procedure directly with the decision making task of planning a path for an agent in an unknown static environment comprised of threats. This coupled sensor configuration and path-planning (CSCP) strategy iteratively uses Gaussian Process Regression to construct a threat field estimate and find a candidate optimal path with minimum threat exposure. The strategy utilizes a unique task-driven information gain (TDIG) metric, which yields the sensor configurations when maximized. Due to the non-convex and non-submodular nature of the problem, we present an approximation for the optimization of the TDIG metric. Finally, we discuss the performance of the breadth-first strategy in contrast to a standard and depth-first strategy as well as traditional information-maximization.
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