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基于相关向量机的电站锅炉NO_x燃烧优化
引用本文:牛培峰,马云鹏,张京,张鑫,李国强,陈贵林,张先臣.基于相关向量机的电站锅炉NO_x燃烧优化[J].计量学报,2016(2):191-196.
作者姓名:牛培峰  马云鹏  张京  张鑫  李国强  陈贵林  张先臣
作者单位:1. 燕山大学工业计算机控制工程河北省重点实验室,河北 秦皇岛,066004;2. 河北钢铁集团承德钢铁公司能源管控中心,河北 承德,067102
基金项目:国家自然科学基金(61573306;61403331)
摘    要:为了降低电站锅炉NO_x排放量,采用一种新的机器学习方法——相关向量机对某330 MW煤粉汽包锅炉的一、二次风速以及含氧量等26个输入参数和NO_x输出结果进行建模,并用万有引力算法对模型的参数进行优化,获得最优模型。与粒子群算法、遗传算法优化相关向量机以及万有引力算法优化支持向量机等进行了比较,选择锅炉输入参数中的可调变量为优化变量,以NO_x低排放量为目标进行优化,获得低NO_x排放的输入参数。结果证明:万有引力优化相关向量机算法建立的模型精确度比其它几种算法高,对模型进行低NO_x优化后,NO_x输出值由最初的的906.65 mg/m~3变为550.600 mg/m~3,下降幅度约为38.9%,实现了NO_x排放量大幅度降低。

关 键 词:计量学  NOx预测  相关向量机  万有引力算法  电站锅炉  优化

Utility Boilers NOx Combustion Optimization Based on Relevance Vector Machine
Abstract:In order to reduce NOx emissions from utility boilers,a new machine learning method———relevance vector machine is presented. This is to build the model of a 330 MW pulverized coal boiler for NOx output and twenty - six inputs such as drum first and secondary air,oxygen and so on,then gravitational search algorithm is used to optimize the parameters of the model to obtain the optimal pattern. Through comparing the outcome of particle swarm optimization’s and genetic algorithm’s optimizing relevance vector machine and gravitational search algorithm ˊs optimizing support vector machine. Finally,the boiler adjustable variable input parameter is selected as the optimization variables for the target of cutting down NOx emissions to achieve the appropriate input parameters of lower NOx emissions. The result shows that gravitational search algorithm’s optimizing relevance vector machine gets better accuracy than the others,after the model of low NOx optimization,the results from the initial NOx output value of 906. 65 mg/ m3 becomes 550. 600 mg/ m3 ,a decrease of approximately 38. 9% ,to achieve a significant reduction in NOx emissions.
Keywords:metrology  NOx forecast  relevance vector machine  gravitational search algorithm  utility boilers  optimization
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