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基于PCA—BP神经网络的锅炉煤质的软测量
引用本文:谭浩艺,陈绍炳,周自强. 基于PCA—BP神经网络的锅炉煤质的软测量[J]. 能源技术(上海), 2009, 30(1): 9-11
作者姓名:谭浩艺  陈绍炳  周自强
作者单位:东南大学能源与环境学院,南京,210096  
摘    要:采用主元分析法(PCA)与BP神经网络相结合的方法,为电站锅炉入炉煤质中的挥发分和低位热值建立了软测量模型。应用主元分析法对与入炉煤质相关的运行参数进行降维处理,再将处理过后的综合变量作为BP神经网络的输入变量,方便和简化了过程数据的处理,亦使得煤质预测的精度得到了有效提高。

关 键 词:煤质  挥发分  低位热值  软测量  主元分析  BP神经网络

Research on Soft-sensing of Boiler Coal Quality Based on Pca-bp Neural Network
TAN Hao-yi,CHEN Shao-bing,ZHOU Zi-qiang. Research on Soft-sensing of Boiler Coal Quality Based on Pca-bp Neural Network[J]. Energy Technology, 2009, 30(1): 9-11
Authors:TAN Hao-yi  CHEN Shao-bing  ZHOU Zi-qiang
Affiliation:Institute of Energy and Environment;Southeast University;Nanjing 210096;China
Abstract:To combine the Principal Component Analysis and the BP Neural Network, establish a soft-sensing model for volatile and lower calorific value of boiler coal in power plant. In this paper, the PCA is applied to reducing the dimension of operational parameter interrelated with boiler coal quality, and then the processed comprehensive factors are required as the input variables of the BP Neural Network, treatment of the process data is facilitated and simplified, and the predicting precision of coal quality can...
Keywords:coal quality  volatile  lower calorific value  soft-sensing  PCA  BP-neural network  
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