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首页> 外文期刊>The Korean journal of chemical engineering >Comparative study of estimation methods of NO_x emission with selection of input parameters for a coal-fired boiler
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Comparative study of estimation methods of NO_x emission with selection of input parameters for a coal-fired boiler

机译:选择输入参数的燃煤锅炉NO_x排放估算方法的比较研究

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This study focuses on estimation of NO (x) emission and selection of input parameters for a coal-fired boiler in a 500 MW power generation plant. Careful selection of input parameters is required not only to improve accuracy of the estimation, but also to reduce the model dimensionality. The initial operating input parameters are determined based on operation heuristics and accumulated operation knowledge; the essential input parameters are selected by sensitivity analysis where the performance of the estimation model is assessed as one or some input parameters are successively eliminated from the computation while all other input parameters are retained. From the sequential input selection process, less than ten input parameters survived out of 36 initial input parameters. Auto-regressive moving average (ARMA) model, artificial neural networks (ANN), partial least-squares (PLS) model, and least-squares support vector machine (LSSVM) algorithm were proposed to express the relationship between the operating input parameters and the content of NO (x) emission. Historical real-time data obtained from a 500 MW power plant coal-fired boiler were used to test the proposed models. It was found that principal components analysis (PCA) enhances the estimation performance of each model. Among the four proposed estimation models, the LSSVM model coupled with PCA scheme showed the minimum root-mean square error (RMSE) and the best R-square value.
机译:这项研究的重点是估算500兆瓦发电厂燃煤锅炉的NO(x)排放量和输入参数的选择。需要仔细选择输入参数,不仅可以提高估计的准确性,还可以减小模型的维数。初始操作输入参数是根据操作启发法和累积的操作知识确定的;通过敏感度分析选择必要的输入参数,其中评估模型的性能被评估,因为一个或一些输入参数被从计算中相继消除,而所有其他输入参数被保留。通过顺序输入选择过程,在36个初始输入参数中,只有不到十个输入参数得以幸存。提出了自回归移动平均(ARMA)模型,人工神经网络(ANN),偏最小二乘(PLS)模型和最小二乘支持向量机(LSSVM)算法来表达操作输入参数与参数之间的关系。 NO(x)排放量。从500 MW电厂燃煤锅炉获得的历史实时数据用于测试建议的模型。发现主成分分析(PCA)增强了每个模型的估计性能。在提出的四个估计模型中,结合PCA方案的LSSVM模型显示出最小均方根误差(RMSE)和最佳R平方值。

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