Fuzzy PID Controller Parameters Optimized by Genetic Algorithms

Salah Kermiche, H. A. Abbassi
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引用次数: 5

Abstract

Real systems have in general significant characteristics such as high-order, nonlinearities, dead- time, etc. and they can be affected by noise, load disturbances and other environment conditions that cause parameter variations and sudden modifications of the model structure. One of the main difficulties in the tuning of the PID parameters is to address at the same time different control specifications. In particular, achieving a high load disturbance rejection performance generally results in an aggressive tuning that provides a too oscillatory set-point step response. A fuzzy inference system is adopted to determine the value of the weight that multiplies the set-point for the proportional action. This contribution introduces genetic algorithms to change the shapes of the membership of the fuzzy controller by changing their basic parameters.
遗传算法优化模糊PID控制器参数
实际系统通常具有显著的特征,如高阶、非线性、死时间等,它们可能受到噪声、负载干扰和其他环境条件的影响,这些环境条件会导致参数变化和模型结构的突然修改。PID参数整定的难点之一是同时处理不同的控制参数。特别是,实现高负载抗干扰性能通常会导致过度调谐,从而提供过于振荡的设定点阶跃响应。采用模糊推理系统确定与比例动作设定值相乘的权值。该贡献引入了遗传算法,通过改变模糊控制器的基本参数来改变其成员的形状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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