Adaptive Memetic Algorithm with Dual-Level Local Search for Cooperative Route Planning of Multi-Robot Surveillance Systems

Hao Cheng;Jin Yi;Wei Xia;Huayan Pu;Jun Luo
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Abstract

The heightened autonomy and robust adaptability inherent in a multi-robot system have proven pivotal in disaster search and rescue, agricultural irrigation, and environmental monitoring. This study addresses the coordination of multiple robots for the surveillance of various key target positions within an area. This involves the allocation of target positions among robots and the concurrent planning of routes for each robot. To tackle these challenges, we formulate a unified optimization model addressing both target allocation and route planning. Subsequently, we introduce an adaptive memetic algorithm featuring dual-level local search strategies. This algorithm operates independently among and within robots to effectively solve the optimization problem associated with surveillance. The proposed method's efficacy is substantiated through comparative numerical experiments and simulated experiments involving diverse scales of robot teams and different target positions.
多机器人监控系统合作路线规划的双级局部搜索自适应记忆算法
事实证明,多机器人系统所固有的高度自主性和强大的适应能力在灾难搜救、农业灌溉和环境监测中发挥着关键作用。本研究探讨了如何协调多个机器人监视区域内的各种关键目标位置。这涉及到在机器人之间分配目标位置以及同时规划每个机器人的路线。为了应对这些挑战,我们制定了一个统一的优化模型,同时解决目标分配和路线规划问题。随后,我们引入了一种具有双级局部搜索策略的自适应记忆算法。该算法在机器人之间和机器人内部独立运行,可有效解决与监控相关的优化问题。通过比较数值实验和涉及不同规模机器人团队和不同目标位置的模拟实验,证明了所提出方法的有效性。
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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CiteScore
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