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Parameter optimization in complex industrial process control based on improved fuzzy-GA

机译:基于改进模糊遗传算法的复杂工业过程控制参数优化

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In the modern complex industrial process, the control system generally has characteristics of large inertia, nonlinearity and time-varying, and its control requirements are diverse and uncertain, so it is difficult to smoothly turn the control parameters. To solve the problem, a fuzzy evaluating approach is used to improve the SGA (simple genetic algorithms), and a fuzzy fitness function is designed to divide those control requirements into many evaluating factors with different weights. The fitness of the individual reflects the fuzzy evaluating degree of control result, and shows the approximate degree of control result in an ideal situation. In the paper, we use the fuzzy-GA to optimize the control parameters of temperature controller in tower type fermenter. Experiments and simulations show that control indexes have been improved and this approach can successfully solve parameter optimization problem in complex industrial process.
机译:在现代复杂的工业过程中,控制系统通常具有惯性大,非线性和时变的特点,其控制要求多样且不确定,因此难以平稳地转换控制参数。为了解决该问题,使用了模糊评估方法来改进SGA(简单遗传算法),并设计了模糊适应度函数以将这些控制要求划分为许多权重不同的评估因素。个体的适应度反映了控制结果的模糊评估程度,并显示了理想情况下控制结果的近似程度。本文采用模糊遗传算法对塔式发酵罐温度控制器的控制参数进行优化。实验和仿真表明,改进了控制指标,成功解决了复杂工业过程中的参数优化问题。

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