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Modeling and Prediction of Coal Ash Fusion Temperature based on BP Neural Network

机译:基于BP神经网络的煤灰融合温度建模与预测

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Coal ash is the residual generated from combustion of coal. The ash fusion temperature (AFT) of coal gives detail information on the suitability of a coal source for gasification procedures, and specifically to which extent ash agglomeration or clinkering is likely to occur within the gasifier. To investigate the contribution of oxides in coal ash to AFT, data of coal ash chemical compositions and Softening Temperature (ST) in different regions of China were collected in this work and a BP neural network model was established by XD-APC PLATFORM. In the BP model, the inputs were the ash compositions and the output was the ST. In addition, the ash fusion temperature prediction model was obtained by industrial data and the model was generalized by different industrial data. Compared to empirical formulas, the BP neural network obtained better results. By different tests, the best result and the best configurations for the model were obtained: hidden layer nodes of the BP network was setted as three, the component contents (SiO2, Al2O3, Fe2O3, CaO, MgO) were used as inputs and ST was used as output of the model.Key words: XD-APC / BP neural network / compositions of coal ash / coal ash fusion temperature
机译:煤灰是由煤的燃烧产生的残留物。煤的灰熔化温度(AFT)提供了关于气化程序的煤炭源的适用性的详细信息,并且具体地,在气化炉内可能发生灰分团聚或克莱克的程度。为探讨煤灰在煤灰对船尾的贡献,在这项工作中收集了中国不同地区的煤灰化学组成和软化温度(ST),并通过XD-APC平台建立了BP神经网络模型。在BP模型中,输入是灰分组成,输出是ST。另外,灰融合温度预测模型是通过工业数据获得的,并且模型由不同的工业数据推广。与经验公式相比,BP神经网络获得了更好的结果。通过不同的测试,获得了模型的最佳结果和最佳配置:BP网络的隐藏层节点已作为三,组分内容物(SiO2,Al2O3,Fe2O3,CaO,MgO)作为输入和ST用作模型的输出.KEY单词:XD-APC / BP神经网络/煤灰/煤灰融合温度的组成

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