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Model predictive optimal control for the coordinated system of supercritical power unit based on firefly algorithm and neural network modeling

机译:基于萤火虫算法和神经网络建模的超临界动力机组协调系统模型预测最优控制

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With the widespread implementation of Automatic Generation Control (AGC) in regional power grids, large-capacity supercritical and ultra-supercritical (SC/USC) power units are required to participate in peak load regulation frequently and often operate under wide-scope variable load conditions. Since a SC boiler unit is a MIMO strong coupling system with nonlinearity and large time delay characteristics, the traditional coordinated control strategy based on PID controllers often cannot meet the requirements with slow load response and large steam pressure fluctuations. Therefore, a model predictive optimal control (MPOC) scheme is proposed for the coordinated system control of a supercritical power unit on the basis of an improved firefly algorithm (FA) and neural network modeling. The MPOC scheme is programmed with MATLAB software and implemented in the full-scope simulator of a 600MW supercritical power unit. The test results show that the method can greatly improve the load response speed and keep the main steam pressure within safety limits.
机译:随着区域电网中自动发电控制(AGC)的广泛实施,要求大容量超临界和超超临界(SC / USC)功率单元频繁参与峰值负载调节,并经常在宽范围可变负载条件下运行。由于SC锅炉单元是具有非线性和大时延特性的MIMO强耦合系统,因此传统的基于PID控制器的协调控制策略通常无法满足负载响应慢和蒸汽压力波动大的要求。因此,在改进的萤火虫算法(FA)和神经网络建模的基础上,提出了一种模型预测最优控制(MPOC)方案,用于超临界动力单元的协调系统控制。 MPOC方案使用MATLAB软件进行编程,并在600MW超临界功率单元的全范围模拟器中实现。试验结果表明,该方法可以大大提高负荷响应速度,并使主蒸汽压力保持在安全范围内。

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