软计算在水轮发电机组控制中的应用

Shuqing Wang, Zipeng Zhang, Liqin Xue
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引用次数: 4

摘要

水电厂水力发电机组系统是一个非线性复杂系统。常规控制器在控制中无法获得良好的控制性能。本文将一种先进的基于模糊、神经网络和遗传算法的软计算技术应用于水电厂水力发电机组系统的控制。在控制器设计或实时控制过程中,采用模糊推理系统作为控制器,采用遗传算法对模糊控制器的参数和规则进行优化。为了对模糊控制器的控制性能进行评价,设计了基于RBF神经网络的控制系统动态辨识模型。在一般遗传算法的基础上,结合控制系统的特点,采用了改进的遗传算法。改进的遗传算法加快了优化速度,使模糊控制器能够有效地获取知识。仿真结果表明,所设计的软计算优化控制系统能够很好地控制水轮发电机组,其控制性能优于常规控制器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Soft Computing in the Control of Hydroelectric Generating Unit
Hydroelectric generating unit system of water plant is a non-linear and complicated system. Conventional controller cannot get good controlling performance in control. In this study, an advanced soft computing technique based on fuzzy, neural network and genetic algorithm is used in the control of hydroelectric generating unit system of hydropower plant. Fuzzy reasoning system is used as controller and genetic algorithm is employed to optimize the parameters and rules of fuzzy controller in the design of controller or real-time control process. Dynamic identification model of control system based on RBF neural networks is designed to appraise the controlling performance of fuzzy controller. In the design, improved genetic algorithm is adopted based on general genetic algorithm and the character of control system. The improved genetic algorithm quickens optimizing speed and makes fuzzy controller acquire knowledge effectively. Simulation results show that the designed soft computing optimization control system can well control hydroelectric generating unit and its control performance is superior to conventional controller.
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