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Adaptive hybrid Particle Swarm Optimization-Gravitational Search Algorithm for fuzzy controller tuning

机译:模糊控制器的自适应混合粒子群优化-引力搜索算法

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This paper introduces an innovative adaptive hybrid Particle Swarm Optimization (PSO)-Gravitational Search Algorithm (GSA) dedicated to the optimal tuning of Takagi-Sugeno-Kang PI-fuzzy controllers (T-S-K PI-FCs). The adaptive hybrid PSO-GSA is comprised from five stages, which support the solving of optimization problems with objective functions that depend on the control error and on the output sensitivity function, and the variables of the objective functions are the fuzzy controller tuning parameters. The adaptive hybrid PSO-GSA is included in the controller tuning to offer control systems with T-S-K PI-FCs that ensure a reduced process parametric sensitivity. Digital simulation and experimental results are given to validate the fuzzy controller tuning in a laboratory nonlinear servo system application.
机译:本文介绍了一种创新的自适应混合粒子群优化(PSO)-引力搜索算法(GSA),用于优化Takagi-Sugeno-Kang PI模糊控制器(T-S-K PI-FC)的优化。自适应混合PSO-GSA由五个阶段组成,这些阶段支持目标函数取决于控制误差和输出灵敏度函数的优化问题的解决,而目标函数的变量是模糊控制器的调整参数。自适应混合PSO-GSA包含在控制器调整中,以向控制系统提供T-S-K PI-FC,以确保降低的过程参数灵敏度。通过数字仿真和实验结果验证了模糊控制器在实验室非线性伺服系统中的应用。

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