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Neural Network Inverse Control for the Coordinated System of a 600MW Supercritical Boiler Unit

机译:600MW超临界锅炉单元协调系统的神经网络逆控制

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A supercritical (SC) once-through boiler unit is a typical multivariable system with large inertia and non-linear, slow time-variant, and time-delay characteristics, which often makes the coordinated control quality deteriorate under wide-range loading conditions, and thus influences the unit load response speed and leads to heavy fluctuation of the main steam pressure. To improve the SC unit's coordinated control quality with advanced intelligent control strategy, the neural-network based inverse system models of a 600MW supercritical boiler unit were investigated. A feedforward neural network with time-delayed inputs and time-delayed output feedbacks was adopted to establish the inverse models for the load and the main steam pressure characteristics. Based on the model, neural network inverse coordinated control scheme was designed and tested in a full-scope power plant simulator of the given SC power unit, which showed that the proposed coordinated control scheme can achieve better control results compared to the original PID coordinated control.
机译:超临界(SC)一次通过锅炉单元是具有大惯性和非线性,慢时变量和时滞的慢时变化的典型多变量系统,这通常使得协调控制质量在宽范围的装载条件下恶化,并且因此,影响单元负载响应速度并导致主蒸汽压力的大波动。为了提高SC单位的协调控制质量,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。采用具有时间延迟输入和时间延迟输出反馈的前馈神经网络来建立负载和主蒸汽压力特性的逆模型。基于该模型,在给定SC电源单元的全范围发电机模拟器中设计和测试了神经网络逆协调控制方案,其显示,与原始PID协调控制相比,所提出的协调控制方案可以实现更好的控制结果。

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