Planning multi-robot formation with improved poly-clonal artificial immune algorithm

Lixia Deng, Xin Ma, J. Gu, Yibin Li
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引用次数: 1

Abstract

In this paper, a novel algorithm to solve multi-robot formation path planning problem is proposed. A combination of the leader-follower and improved poly-clonal artificial immune algorithm is used to derive the formation architecture. The formation of multi-robot is maintained through controlling the distance and angle between leader and followers. Robots reach the desired positions and avoid obstacles with improved poly-clonal artificial immune algorithm. Artificial immune network has been widely used in obstacles avoidance with the strong searching ability and learning ability. Improved poly-clonal artificial immune algorithm increases the diversity of antibodies. Concentration of every antibody is computed based on the algorithm. Only the antibody with the highest concentration is selected to act on robot. Meanwhile, formation control system changes the leader temporarily when the original followers encounter with obstacles. Extensive experiments show that the proposed algorithm effectively maintains the formation and successfully avoids obstacles. Simulations validate the effectiveness and stability of the proposed algorithm.
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基于改进多克隆人工免疫算法的多机器人编队规划
提出了一种求解多机器人编队路径规划问题的新算法。采用领导-从众算法和改进的多克隆人工免疫算法相结合的方法推导了群体结构。通过控制leader和follower之间的距离和角度来维持多机器人的形成。利用改进的多克隆人工免疫算法,实现机器人到达目标位置并避开障碍物。人工免疫网络具有较强的搜索能力和学习能力,在避障中得到了广泛的应用。改进的多克隆人工免疫算法增加了抗体的多样性。根据该算法计算各抗体的浓度。只有浓度最高的抗体被选择作用于机器人。同时,当原follower遇到障碍物时,编队控制系统会临时更换leader。大量的实验表明,该算法有效地保持了编队,并成功地避开了障碍物。仿真结果验证了该算法的有效性和稳定性。
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