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Design of a fuzzy controller in mobile robotics using genetic algorithms

机译:基于遗传算法的移动机器人模糊控制器设计

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The design of fuzzy controllers for the implementation of behaviors in mobile robotics is a complex and highly time-consuming task. The use of machine learning techniques, such as evolutionary algorithms or artificial neural networks for the learning of these controllers allows to automate the design process. In this paper, the automated design of a fuzzy controller using genetic algorithms for the implementation of the wall-following behavior in a mobile robot is described. The algorithm is based on the Iterative Rule Learning (IRL) approach, and a parameter (8) is defined with the aim of selecting the relation between the number of rules and the quality and accuracy of the controller. The designer has to define the universe of discourse and the precision of each variable, and also the scoring function. No restrictions are placed neither in the number of linguistic labels nor in the values that define the membership functions.
机译:用于在移动机器人中实现行为的模糊控制器的设计是一项复杂且耗时的任务。使用机器学习技术(例如进化算法或人工神经网络)来学习这些控制器可以使设计过程自动化。在本文中,描述了使用遗传算法自动实现模糊控制器的模糊控制器的自动化设计,以实现移动机器人中的墙跟随行为。该算法基于迭代规则学习(IRL)方法,并且定义参数(8)的目的是选择规则数量与控制器的质量和准确性之间的关系。设计人员必须定义话语范围,每个变量的精度以及评分功能。语言标签的数量和定义隶属函数的值都没有任何限制。

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