Data Fusion-Aware Motion Planning for Ad Hoc Robotic Search Teams

Jack D. Center, N. Ahmed
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Abstract

This paper develops a novel algorithmic motion planning approach that allows privately-owned volunteer robotic equipment, which might otherwise remain unused, to provide value to a network of relief workers or other robots engaged in a search effort. The specific ‘Volunteer Robot Problem’ considered here is a path planning problem that asks an autonomous volunteer robot to balance information gathering tasks with data fusion when it becomes part of an ad hoc distributed robotic network supporting a deliberate relief effort. Related prior work considered optimal search strategies over information fields, but often these methods assume direct access to high performance centralized computing or to continuous communications for decentralized coordination. In this work, we provide a formal definition for the ‘Volunteer Robot Problem’ and information as it relates to general search tasks, and develop a novel information gathering planning algorithm to solve it. Our method improves upon existing sample-based planning algorithms by accounting for intermittent data fusion opportunities with other search agents, while remaining computationally lightweight and requiring minimal a priori knowledge of both ownship and other agents' states and capabilities. Simulation-based validation and comparisons to alternative planning approaches are provided of the algorithm through simulations for different multi-agent search scenarios and comparisons to other sampling-based algorithms for information-guided path planning.
自组织机器人搜索队的数据融合感知运动规划
本文开发了一种新颖的算法运动规划方法,允许私人拥有的志愿者机器人设备(否则可能会被闲置)为参与搜索工作的救援人员或其他机器人网络提供价值。这里考虑的具体的“志愿者机器人问题”是一个路径规划问题,要求一个自主的志愿者机器人在成为支持故意救济工作的临时分布式机器人网络的一部分时,平衡信息收集任务和数据融合。相关的先前工作考虑了信息领域的最优搜索策略,但这些方法通常假设直接访问高性能集中计算或连续通信以进行分散协调。在这项工作中,我们为“志愿者机器人问题”和信息提供了一个正式的定义,因为它与一般搜索任务有关,并开发了一种新的信息收集规划算法来解决它。我们的方法通过考虑与其他搜索代理的间歇性数据融合机会,改进了现有的基于样本的规划算法,同时保持计算轻量级,并且需要最少的所有权和其他代理状态和能力的先验知识。通过对不同多智能体搜索场景的仿真和与其他基于采样的信息导向路径规划算法的比较,对该算法进行了基于仿真的验证和与备选规划方法的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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