基于实时粒子群算法的iRobot Create机器人自适应学习2型模糊控制器设计

N. Baklouti, A. Alimi
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引用次数: 8

摘要

最近,人们对学习2型模糊逻辑系统产生了相当大的兴趣,主要是关于如何确定语言变量的不确定性的足迹。事实上,开发二类模糊系统的复杂性和难度可以在确定隶属函数的最佳参数时找到。在实际机器人应用中,设计2型模糊控制器的任务非常复杂,本质上是因为存在多种形式的噪声和不确定性,其中机器人在导航时必须控制许多变量。针对机器人运动规划任务,提出了一种新的自适应学习型2型模糊逻辑控制器。利用实时粒子群优化技术对模型进行实时调整。该架构取得了良好的效果,并在“iRobot Create”机器人上进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real time PSO based adaptive learning type-2 fuzzy logic controller design for the iRobot Create robot
Recently, there has been a considerable interest on learning type-2 fuzy logic systems, essentially on how determining the footprint of uncertainties of linguistic variables. In fact, the complexity and difficulty in developing type-2 fuzzy systems can be located at the time of deciding which are the best parameters of membership functions (MFs). In real robot applications, the task of designing a type-2 fuzzy logic controller is complex enough essentially because the presence of many forms of noise and uncertainties, where the robot while navigating has to control many variables. In this paper we present a novel adaptive learning type-2 fuzzy logic controller (FLC) for robot motion planing task. The MFs are tuned instantanously using real time particle swarm optimization technique. The proposed architecture presented good results which were demonstrated on the “iRobot Create” robot.
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