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Improving FCC plant performance with model reference adaptive control based on neural network

机译:基于神经网络的模型参考自适应控制提高催化裂化装置性能

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The current paper presents the research results obtained by the authors regarding the automation of the reactor - regenerator group associated with the catalytic cracking process, using a model reference adaptive control system based on neural network. The first part of the paper describes the conventional control structure of the reactor-regenerator group. The second part of paper presents neural network model reference adaptive control structure proposed for the reactor-regenerator group. The proposed NN-model reference adaptive controller can significantly improve the reactor-regenerator group behavior and force the system to follow the reference model and minimize the error between the model and plant output. The results of the simulation have shown comparable or even superior performance against to the specific use of conventional techniques.
机译:本论文使用基于神经网络的模型参考自适应控制系统,介绍了作者在与催化裂化相关的反应堆-再生器组自动化方面的研究成果。本文的第一部分描述了反应堆-再生器组的常规控制结构。论文的第二部分提出了针对反应堆-再生器组的神经网络模型参考自适应控制结构。所提出的NN模型参考自适应控制器可以显着改善反应堆-再生器组的性能,并迫使系统遵循参考模型,并最大程度地减小模型与工厂输出之间的误差。仿真结果表明,与常规技术的特定用途相比,该性能具有可比甚至更好的性能。

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