移动机器人随墙控制采用改进人工蜂群算法,设计了一种补偿模糊控制器

C. Chen, H. Du, S. Lin
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引用次数: 9

摘要

本文提出了一种改进的人工蜂群(lABC)算法,用于设计补偿模糊控制器(CLFC),以实现实际的移动机器人wall-follow任务。在wall-following任务中,CFLC输入测量超声波传感器与墙壁之间的距离,CFLC输出是机器人的左轮和右轮速度。定义了一个成本函数来评估CFLC在wall-follow任务中的性能。成本函数包括三个控制因素(CF),定义为:保持用户定义的机器人与墙的距离,避免机器人与墙的碰撞,确保机器人能够顺利通过场地。原始的人工蜂群算法(artificial bee colony algorithm, ABC)模拟了蜜蜂群的智能觅食行为,这些蜜蜂群擅长探索,但不擅长利用。提出了一种改进的ABC算法,即IABC算法,该算法采用差分进化的突变策略来平衡探索和开发。IABC算法采用了一种新的基于奖励的轮盘选择方法,在学习阶段通过获得奖励来获得更好的解。为了证明IABC设计的CFLC的性能,将该方法与其他基于种群的算法进行了墙跟随任务效率的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobile robot wall-following control by improved artificial bee colony algorithm to design a compensatory fuzzy logic controller
This dissertation proposes an improved artificial bee colony (lABC) algorithm for designing a compensatory fuzzy logic controller (CLFC) in order to achieve an actual mobile robot wall-following task. During the wall-following task, the CFLC inputs measure the distance between the ultrasonic sensors and the wall, and the outputs of the CFLC are the robot's left-wheel and right-wheel speeds. A cost function is defined to evaluate the performance of the CFLC in the wall-following task. The cost function includes three control factors (CF) which are defined as follows: maintaining a user-defined robot-wall distance, avoiding robot-wall collision, and ensuring that the robot can successfully negotiate the venue. The original artificial bee colony algorithm (ABC) simulates the intelligent foraging behavior of honey-bee swarms, which are good at exploration but poor at exploitation. An improved ABC algorithm, the IABC algorithm, is proposed that adopts the mutation strategies of differential evolution to balance exploration and exploitation. The IABC algorithm applies a new reward-based roulette wheel selection where an obtained a better solution by gains a reward during the learning stage. To demonstrate the performance of the IABC designed CFLC, the method was compared with other population-based algorithms with respect to the efficiency of the wall-following task.
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