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Parameter Optimization of Fuzzy-Neural-Network Decoupling Controller for Adjusting Temperatures of Regenerative Reheating Furnace

机译:模糊神经网络去耦控制器的参数优化,用于调节再生再加热炉温度的情况

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This paper addresses the problem of controlling the temperature of the combustion process in a billet regenerative reheating furnace, and presents a method of optimizing the parameters of a fuzzy-neural-network decoupling controller (FNNDC) through the combination of an immune clone and a self-adaptive mutation rate. First, a recurrent neural network is built to model the process based on data from actual runs. Then, the number and parameters of hidden neurons in the FNNDC are determined by means of a fuzzy c-means clustering strategy. Finally, an algorithm for immune-clone evolution (ICE) is combined with a self-adaptive mutation rate to optimize the connecting weights of the FNNDC. This method features global optimization and high precision in local searches. Simulation results demonstrate the validity of this method and its superiority over genetic algorithms.
机译:本文解决了控制坯料再生再加热炉中的燃烧过程温度的问题,并提出了一种通过免疫克隆和自身的组合优化模糊神经网络去耦控制器(FNNDC)的参数的方法 - 适当的突变率。首先,建立经常性神经网络以基于实际运行的数据来模拟过程。然后,通过模糊C-Means聚类策略确定FNNDC中隐藏神经元的数量和参数。最后,将用于免疫克隆演化(ICE)的算法与自适应突变率组合以优化FNNDC的连接权。此方法在本地搜索中具有全局优化和高精度。仿真结果证明了这种方法的有效性及其在遗传算法中的优越性。

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