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Reinforcement Neural Fuzzy Surrogate-Assisted Multiobjective Evolutionary Fuzzy Systems With Robot Learning Control Application

机译:钢筋神经模糊代理辅助多目标进化模糊系统,具有机器人学习控制应用

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This paper proposes a new reinforcement neural fuzzy surrogate (RNFS)-assisted multiobjective evolutionary optimization (RNFS-MEO) algorithm to boost the learning efficiency of data-driven fuzzy controllers (FCs). The RNFS-MEO is applied to evolve a population of FCs in a multiobjective robot wall-following control problem in order to reduce the number of time-consuming control trials and the implementation time of learning. In the RNFS-MEO, the RNFS is incorporated into a typical multiobjective continuous ant colony optimization algorithm to improve its learning efficiency. The RNFS estimates the accumulated multiobjective function values of the FCs in a colony without applying them to control a process, which helps reduce the number of control trials. The RNFS is trained online through structure and parameter learning based on the reinforcement signals from controlling a process. Considering the influence of the current control signals on the future states of a controlled process, the temporal difference technique is used in the RNFS training so that it estimates not only the current but also the future objective function values. The colony of FCs in the RNFS-MEO is repeatedly evolved based on the RNFS estimated values or the objective function values from real evaluations until a colony of successful FCs is found. The RNFS-MEO-based FC learning approach is applied to a robot wall-following control problem. Simulations and experiments on the robot control application are performed to verify the effectiveness and efficiency of the RNFS-MEO.
机译:本文提出了一种新的加固神经模糊代理(RNFS) - 拟议的多目标进化优化(RNFS-MEO)算法,提升了数据驱动模糊控制器(FCS)的学习效率。 RNFS-MEO应用于在多目标机器人墙壁跟随控制问题中进化FCS群体,以减少耗时的控制试验次数和学习时间。在RNFS-MEO中,RNFS被纳入典型的多目标连续蚁群优化算法,以提高其学习效率。 RNFS估计群体中FCS的累积多目标函数值,而无需将它们施加到控制过程,这有助于减少控制试验的数量。 RNFS通过基于控制过程的加强信号通过结构和参数学习进行培训。考虑到当前控制信号对控制过程的未来状态的影响,在RNFS训练中使用时间差差技术,以便它不仅估计当前的目录,而且估计未来的物理函数值。在RNFS-MEO中的FCS殖民地基于RNFS估计值或来自真实评估的目标函数值,直到发现成功的FCS殖民地。基于RNFS-MEO的FC学习方法应用于机器人壁面的控制问题。执行机器人控制应用的模拟和实验,以验证RNFS-MEO的有效性和效率。

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