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Quantitative analysis of the major components of coal ash using laser induced breakdown spectroscopy coupled with a wavelet neural network (WNN)

机译:激光诱导击穿光谱结合小波神经网络(WNN)对煤灰主要成分进行定量分析

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摘要

A laser induced breakdown spectroscopy (LIBS) technique was applied to detect the major components of coal ash based on a wavelet neural network (WNN). Prior to constructing the WNN model, the spectra were preprocessed using wavelet threshold de-noising and Kalman filtering, and the principle components (PC), extracted using principle component analysis (PCA), were used as the input variables. Afterwards, the quantitative analysis of the major components in coal ash samples was completed using the WNN with the optimized WNN model parameters consisting of the number of hidden neurons (NHN), the number of iterations (NI), the learning rate (LR) and the momentum based on the root mean square error (RMSE). Finally, an artificial neural network (ANN) and the WNN were evaluated comparatively on their ability to predict the content of major components of test coal ash samples in terms of correlation coefficient (R) and RMSE, demonstrating that LIBS combined with a WNN model exhibited better prediction for coal ash, and is a promising technique for combustion process control even in the online mode.
机译:基于小波神经网络(WNN),应用激光诱导击穿光谱技术(LIBS)检测煤灰的主要成分。在构建WNN模型之前,使用小波阈值降噪和卡尔曼滤波对光谱进行预处理,并使用主成分分析(PCA)提取的主成分(PC)作为输入变量。之后,使用优化的WNN模型参数(包括隐藏神经元数(NHN),迭代次数(NI),学习率(LR)和WNN),使用WNN完成了煤灰样品中主要成分的定量分析。基于均方根误差(RMSE)的动量。最后,根据相关系数(R)和RMSE对人工神经网络(ANN)和WNN预测煤灰样品主要成分含量的能力进行了比较评估,表明LIBS与WNN模型相结合更好地预测煤灰,即使在在线模式下,也是一种有前途的燃烧过程控制技术。

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