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Neural network inverse models of supercritical boiler unit for intelligent coordinated controller design

机译:智能协调控制器设计超临界锅炉单元神经网络逆模型

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摘要

A supercritical (SC) or ultra-supercritical (USC) once-through boiler unit is a typical multi-variable system with large inertia and non-linear, slow time-variant, time-delay characteristics, which often makes the coordinated control quality deteriorate under wide-range load-changing conditions, and thus influences the unit load response speed and leads to heavy fluctuations for main steam pressure. To improve the supercritical boiler unit's coordinated control quality with advanced intelligent control strategy, the neural-network based inverse system models for a 600MW supercritical boiler unit were investigated. The inputs and outputs of the two separate models for load and main steam pressure were determined by analyzing the schematic of the supercritical power unit and its coordinated control modes. A standard BP neural network and a BP neural network with time-delay inputs and time-delay outputs feedback were respectively adopted to establish the inverse models. The models were compared and validated by simulation tests, which showed that the models with time-delay inputs and outputs feedback are favorable for intelligent coordinated controllers' design with higher precision, better generalization ability and also simple structure.
机译:超临界(SC)或超临界(USC)直流锅炉单元是具有大惯量和非线性的,慢时变,时间延迟特性,这往往使得协调控制质量恶化典型的多变量系统在广泛的负载变化条件下,因此影响单位负荷响应速度并导致主要蒸汽压力的大波动。为了提高超临界锅炉单元的协调控制质量,采用先进的智能控制策略,研究了600MW超临界锅炉单元的神经网络的逆系统模型。通过分析超临界电源单元的示意图和其协调的控制模式,确定两个单独的负载和主蒸汽压力模型的输入和输出。分别采用标准BP神经网络和具有时间延迟输入和时间延迟输出反馈的BP神经网络来建立逆模型。通过模拟测试进行比较和验证模型,显示了具有时间延迟输入和输出反馈的模型对于具有更高精度,更好的泛化能力以及结构简单的智能协调控制器的设计是有利的。

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