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Monitoring of Efficiency and NO_x Emissions at a coal-fired utility boiler

机译:监测燃煤电厂锅炉效率和NO_X排放量

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In order to improve boiler efficiency and to reduce the NO_x emission of a coal-fired utility boiler using combustion optimization, a hybrid model was proposed to monitor boiler efficiency and NO_x emissions. In this model, operational parameters were inputs, and its features were selected by kernel principal component analysis (KPCA). The relationships between the selected features and combustion products such as NO_x emissions, unburned carbon and oxygen content in flue gas were mapped by ε-support vector regression (ε-SVR), and then boiler efficiency was calculated by analytical model. The parameters of hybrid model were determined by grid search and 5-fold cross validation. The predicted results indicate that the presented hybrid model can monitor both efficiency and NO_x emissions of coal-fired utility boiler, and the predicted performance of KPCA-ε-SVR model is more superior, comparing the other two models.
机译:为了提高锅炉效率并利用燃烧优化减少燃煤电锅炉的NO_X排放,提出了一种混合模型来监测锅炉效率和NO_X排放。在该模型中,操作参数是输入的,其特征由内核主成分分析(KPCA)选择。通过ε-支持载体回归(ε-SVR)映射所选特征和燃烧产物,例如NO_X排放,未燃烧的碳和氧含量的关系,然后通过分析模型计算锅炉效率。混合模型的参数由网格搜索和5倍交叉验证确定。预测结果表明,所呈现的混合模型可以监测燃煤型锅炉的效率和NO_X排放,并且KPCA-ε-SVR模型的预测性能更优越,比较其他两个模型。

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