基于非线性MA模型的NOx生成过程预测

Jian-jiang Cui, X. Jia, Pengfei Hou, Yaxu Hu, X. Lei
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引用次数: 1

摘要

在火力发电过程中,污染物中NOx含量的预测对NOx的消除具有积极作用。本文采用具有时滞的非线性移动平均(MA)模型作为预测模型,对NOx的生成过程进行预测。首先,采用相关系数法将所有影响NOx生成的变量分成几类,选取每一类中与NOx相关系数最大的变量作为主变量。然后利用BP神经网络方法在主变量中选取影响最大的3个变量作为预测模型的输入变量。接下来,利用相关系数法确定预测模型中三个输入变量的时滞参数。利用最小二乘法对MA模型的其他参数进行估计,得到NOx生成过程的预测模型。最后,以某电厂发电过程的实际数据为例,验证了所提预测方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of NOx Generation Process Based on A Nonlinear MA model
In the process of a thermal power generation, the prediction of the amount of NOx in contaminant has a positive effect on the elimination of NOx. In this paper, the nonlinear moving average (MA) model with time-delays is used as the prediction model to predict the process of NOx generation. Firstly, the correlation coefficient method is used to divide all variables affecting the NOx generation into several categories, and the variable whose correlation coefficient with NOx is the biggest in each category is selected as a main variable. Then BP neural network method is used to select the three variables with the greatest influence among the main variables as the input variables in the prediction model. Next, the correlation coefficient method is used to determine the time-delay parameters of the three input variables in the prediction model. What’s more, the least square method is used to estimate other parameters of the MA model to obtain a prediction model of a NOx generation process. Finally, the practical data from the generation process of a power plant are used to verify the effectiveness of the proposed prediction method.
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