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Multi-robot hunting in dynamic environments

机译:动态环境中的多机器人狩猎

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摘要

This paper is concerned with multi-robot hunting in dynamic environments. A BCSLA approach is proposed to allow mobile robots to capture an intelligent evader. During the process of hunting, four states including dispersion-random-search, surrounding, catch and prediction are employed. In order to ensure each robot appropriate movement in each state, a series of strategies are developed in this paper. The dispersion-search strategy enables the robots to find the evader effectively. The leader-adjusting strategy aims to improve the hunting robots’ response to environmental changes and the outflank strategy is proposed for the hunting robots to force the evader to enter a besieging circle. The catch strategy is designed for shrinking the besieging circle to catch the evader. The predict strategy allows the robots to predict the evader’s position when they lose the tracking information about the evader. A novel collision-free motion strategy is also presented in this paper, which is called the direction-optimization strategy. To test the effect of cooperative hunting, the target to be captured owns a safety-motion strategy, which helps it to escape being captured. The computer simulations support the rationality of the approach.
机译:本文涉及动态环境中的多机器人搜寻。提出了一种BCSLA方法,以允许移动机器人捕获智能逃避者。在狩猎过程中,采用了分散分散搜索,包围,捕获和预测四个状态。为了确保每个机器人在每种状态下都能适当运动,本文提出了一系列策略。分散搜索策略使机器人能够有效地找到逃避者。领导者调整策略旨在改善狩猎机器人对环境变化的反应,并提出了侧翼策略,以使狩猎机器人迫使逃避者进入围困圈。捕获策略旨在缩小包围圈以捕获逃避者。预测策略使机器人在丢失有关逃避者的跟踪信息时可以预测逃避者的位置。本文还提出了一种新颖的无碰撞运动策略,称为方向优化策略。为了测试合作狩猎的效果,要捕获的目标拥有一种安全运动策略,可以帮助其逃脱被捕获的危险。计算机仿真证明了该方法的合理性。

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