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Genetic Algorithm optimization of I/O scales and parameters for FLIC in servomotor control

机译:伺服电机控制中FLIC I / O比例和参数的遗传算法优化

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Direct Current (DC) servomotors are widely used in robot manipulator applications. Servomotors use feedback controller to control either the speed or the position or both. This paper discusses the modeling and simulation of DC servomotor control built using MATLAB/Simulink, and the analysis of controller performance, namely a Fuzzy Logic parallel Integral Controller (FLIC) in which the I/O scale factors, membership functions, and rules of Fuzzy Logic Controller (FLC) and integrator constant are optimized using Genetic Algorithm (GA) sequentially. The singleton fuzzification is used as a fuzzifier: seven membership functions initially for both input and output of fuzzy logic controller. The center average is used as a defuzzifier. The 32-bit-50-population is used in GA for I/O scales, and 21-bit-30-population is used in GA for membership functions. Two control modes are applied in cascaded to the plant: position control and speed control . Simulation results show that FLIC with GA-optimized is the best performance compared to FLIC, FLC, and FLC with GA.
机译:直流(DC)伺服电机广泛用​​于机器人操纵器应用中。伺服电机使用反馈控制器来控制速度或位置,或同时控制速度和位置。本文讨论了使用MATLAB / Simulink构建的直流伺服电动机控制的建模和仿真,以及控制器性能的分析,即具有I / O比例因子,隶属函数和模糊规则的模糊逻辑并行积分控制器(FLIC)。顺序使用遗传算法(GA)优化逻辑控制器(FLC)和积分常数。单例模糊化用作模糊器:最初有七个隶属函数用于模糊逻辑控制器的输入和输出。中心平均值用作去模糊器。 GA中将32位50人口用于I / O规模,GA中将21位30人口用于成员功能。两种控制模式级联应用于工厂:位置控制和速度控制。仿真结果表明,与具有GA的FLIC,FLC和FLC相比,具有GA优化的FLIC是最佳性能。

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