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Target Search Using Swarm Robots with Kinematic Constraints

机译:使用具有运动学约束的群体机器人进行目标搜索

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Taking target search with swarm robots for instance, we explore an approach to control swarm whose members are autonomous wheeled mobile robots with non-holonomic constraints. Comparing the differences and similarities between robot and particle in properties and behaviors, the authors map swarm search to particle swarm optimization (PSO). Given de.nitions of neighborhood structure and time-varying character swarm of robot, we extend PSO to model swarm robotic system at an abstract level. Multi-source heterogeneous signals of target are detected and fused independently by each robot in parallel, being used to decide the best-found positions both of robot itself and of character swarm by comparison. Then the expected positional series can be gained in iteration control by synthesizing its inertia and experience as well as experience of its character swarm. Finally, control vector consisting of linear and angular velocity is translated as available control inputs to individual controller at each time step, depending on robot kinematics. By this way, swarm robots can work together cooperatively. Simulation results indicate the validity of our control strategy and designed algorithm.
机译:以群体机器人为目标进行搜索,我们探索了一种控制群体的方法,该群体的成员是具有非完整约束的自主轮式移动机器人。比较机器人和粒子在属性和行为上的异同,作者将群搜索映射到粒子群优化(PSO)。考虑到机器人的邻域结构和时变字符群的定义,我们将PSO扩展到抽象级别的群体机器人系统模型。每个机器人并行地独立检测和融合目标的多源异构信号,用于通过比较确定机器人本身和角色群的最佳位置。然后,通过综合其惯性和经验以及其角色群的经验,可以在迭代控制中获得预期的位置序列。最后,取决于机器人的运动学,由线性和角速度组成的控制向量在每个时间步均转换为各个控制器的可用控制输入。这样,群机器人可以协同工作。仿真结果表明了本文控制策略和算法的有效性。

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