华电技术 ›› 2020, Vol. 42 ›› Issue (9): 32-36.

• 系统模拟与优化 • 上一篇    下一篇

基于长短期记忆神经网络的吸收塔pH值预测模型

  

  1. 中国华电科工集团有限公司,北京 100070
  • 出版日期:2020-09-25 发布日期:2020-09-28

Prediction model for the pH value of absorption tower slurry based on LSTM neural networks

  1. China Huadian Engineering Corporation Limited,Beijing 100070,China
  • Online:2020-09-25 Published:2020-09-28

摘要: 火电厂石灰石-石膏湿法脱硫系统中,吸收塔循环浆液的pH值是影响脱硫系统性能的重要参数。因此建立有效的吸收塔pH值预测模型是提高脱硫效率的基础。针对吸收塔系统具有变量多、数据量庞大和变量相关性强的特点,首先对电厂厂级信息监测系统(SIS)数据库数据进行特征提取,进行皮尔逊系数相关性分析;然后将提取的特征作为长短期记忆(LSTM)神经网络的输入,得到脱硫吸收塔pH值预测模型。将该模型应用于某超临界330 MW机组燃煤电厂脱硫系统进行吸收塔pH值预测。结果表明提出的LSTM神经网络模型预测均方根误差(RMSE)为0.004,平均绝对误差(MAE)为0.003;测试显示LSTM神经网络模型数据跟踪效果预测结果波动较小,误差较低且模型稳定性较高。

关键词: 神经网络, 预测模型, 湿法脱硫, 吸收塔pH值, 人工智能, 长短期记忆, 厂级信息监测系统, 大数据

Abstract: In the limestone-gypsum wet desulfurization systems of thermal power plants, the pH value of circulating slurry in absorption towers is an important parameter that affects the performance of desulfurization systems. Therefore, establishing an effective pH value prediction model is fundamental for improving the desulfurization efficiency. The absorption tower system has the characteristics of massive data volume and variable parameters which have strong correlations. Thus,feature extraction and Pearson's r correlation analysis were performed on the data from a plant-level SIS (Supervisory Information System) database.Then, the extracted features were taken as the input of the Long Short-Term Memory (LSTM) neural network to obtain a prediction model for the pH value of desulfurization slurry. The model was applied to a supercritical 330 MW unit coal-fired unit desulfurization system in predicting the pH value of the absorption tower. The root mean square error (RMSE) of the pH values predicted by LSTM neural network model is 0.004, and the mean absolute error (MAE) is 0.003; The test shows that the data tracking results made by LSTM neural network model is of little fluctuations, small errors and high stability.

Key words: neural networks, prediction model, wet desulfurization, pH value of the absorption tower, artificial intelligence, LSTM, SIS, big data