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Modeling of combined cycle power plant based on a genetic algorithm parameter identification method

机译:基于遗传算法参数辨识方法的联合循环电厂建模

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Classic combined cycle power plant models are often too complex for power system dynamic analysis, and hard to estimate the parameters accurately. The performances of parameter identification procedures have been significantly reduced by high-dimensional searches and strong nonlinear relationships. A new non-linear model is proposed to be suitable for the parameter identification procedure in this paper. An identification method based on an improved genetic algorithm (GA) is used for the modeling of a 400MW combined cycle power plant. The whole system is divided into six parts and an artificial disturbance is recorded for the identification of each part. The results show great consistence between identified model responses and the experimental data.
机译:经典的联合循环电厂模型通常对于电力系统动态分析而言过于复杂,并且难以准确估算参数。高维搜索和强非线性关系大大降低了参数识别过程的性能。提出了一种适用于参数辨识的非线性模型。基于改进遗传算法(GA)的识别方法用于400MW联合循环发电厂的建模。整个系统分为六个部分,并记录了人为干扰以识别每个部分。结果表明,确定的模型响应与实验数据之间具有很好的一致性。

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