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Iterative Rule Learning of Quantified Fuzzy Rules for control in mobile robotics

机译:移动机器人控制中量化模糊规则的迭代规则学习

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Learning controllers in mobile robotics usually requires expert knowledge to define the input variables. However, these definitions could be obtained within the algorithm that generates the controller. This cannot be done using conventional fuzzy propositions, as the expressiveness that is necessary to summarize tens or hundreds of input variables in a proposition is high. In this paper the Quantified Fuzzy Rules (QFRs) model has been used to transform low-level input variables into high-level input variables, which are more appropriate inputs to learn a controller. The algorithm that learns QFRs is based on the Iterative Rule Learning approach. The algorithm has been tested learning a controller in mobile robotics and using several complex simulated environments. Results show a good performance of our proposal, which has been compared with another three approaches.
机译:移动机器人技术中的学习控制器通常需要专业知识来定义输入变量。但是,可以在生成控制器的算法中获得这些定义。使用常规的模糊命题无法做到这一点,因为总结一个命题中数十个或数百个输入变量所需的表达能力很高。在本文中,已使用量化模糊规则(QFR)模型将低级输入变量转换为高级输入变量,这是学习控制器的更合适的输入。学习QFR的算法基于迭代规则学习方法。该算法已经过测试,可以在移动机器人中学习控制器,并可以使用几种复杂的模拟环境。结果表明我们的建议具有良好的性能,已与其他三种方法进行了比较。

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