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Heat Rate Prediction of Combined Cycle Power Plant Using an Artificial Neural Network (ANN) Method

机译:利用人工神经网络(ANN)方法对组合循环发电厂的热速率预测

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摘要

Heat rate of a combined cycle power plant (CCPP) is a parameter that is typically used to assess how efficient a power plant is. In this paper, the CCPP heat rate was predicted using an artificial neural network (ANN) method to support maintenance people in monitoring the efficiency of the CCPP. The ANN method used fuel gas heat input (P1), CO2 percentage (P2), and power output (P3) as input parameters. Approximately 4322 actual operation data are generated from the digital control system (DCS) in a year. These data were used for ANN training and prediction. Seven parameter variations were developed to find the best parameter variation to predict heat rate. The model with one input parameter predicted heat rate with regression R2 values of 0.925, 0.005, and 0.995 for P1, P2, and P3. Combining two parameters as inputs increased accuracy with regression R2 values of 0.970, 0.994, and 0.984 for P1 + P2, P1 + P3, and P2 + P3, respectively. The ANN model that utilized three parameters as input data had the best prediction heat rate data with a regression R2 value of 0.995.
机译:组合循环发电厂(CCPP)的热速率是通常用于评估发电厂的效率的参数。本文使用人工神经网络(ANN)方法预测了CCPP热速率,以支持监测CCPP效率的维护人员。 ANN方法使用燃料气体热输入(P1),CO2百分比(P2)和电源输出(P3)作为输入参数。大约4322个实际操作数据一年中的数字控制系统(DCS)生成。这些数据用于ANN培训和预测。开发了七个参数变化,以找到预测热速率的最佳参数变化。具有一个输入参数的模型预测热速率,回归R2值为0.925,0.005和0.995,适用于P1,P2和P3。将两个参数组合为输入增加了P1 + P2,P1 + P3和P2 + P3的回归R2值的准确度,分别为0.970,0.994和0.984。使用三个参数作为输入数据的ANN模型具有最佳的预测热速率数据,其中回归R2值为0.995。

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