Determination of Water Content in Automobile Lubricant Using Near-Infrared Spectroscopy Improved by Machine Learning Analysis

Yun Zhao, Xing Xu, Lulu Jiang, Yu Zhang, Li-hong Tan, Yong He
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引用次数: 2

Abstract

The main objective of this paper is to determine the water content of automobile lubricant based on the near-infrared (NIR) spectra collected and to observe whether NIR spectroscopy could be used for predicting water content. Least square support vector machine (LS-SVM), back-propagation neural networks (BPNN) and Gaussian processes regression (GPR) were employed to develop prediction models. There were 150 samples for training set and test set, 6 inputs for one sample obtained by principle component analysis (PCA). LS-SVM models were developed with a grid search technique and RBF kernel function. The Levenberg-Marquardt algorithm was employed to optimize back-propagation neural network (BPNN) and models with 5 and 6 neurons in hidden layer were developed, respectively. The BPNN model with 5 neurons in hidden layer outperformed the one with 6 neurons. Three GPR models were built based on full data points (full GPR), subset of regressors (SR GPR) and subset of datasets (SD GPR), respectively, with Squared exponential (SE) covariance function. The full GPR outperformed SR GPR and SD GPR.The overall results indicted that the Gaussian processes model outperformed LS-SVM and BPNN model. GPR was an effective way for the regress prediction. NIR spectroscopy combined with PCA and GPR had the capability to determine the water content of automobile lubricant with high accuracy.
机器学习分析改进的近红外光谱法测定汽车润滑油中水分含量
本文的主要目的是利用收集到的近红外光谱来确定汽车润滑油的含水量,并观察近红外光谱是否可以用于预测润滑油的含水量。采用最小二乘支持向量机(LS-SVM)、反向传播神经网络(BPNN)和高斯过程回归(GPR)建立预测模型。训练集和测试集共150个样本,主成分分析(PCA)得到6个输入,每一个样本。利用网格搜索技术和RBF核函数建立了LS-SVM模型。采用Levenberg-Marquardt算法对bp神经网络(back-propagation neural network, BPNN)进行优化,分别建立了隐层神经元数为5和6的bp神经网络模型。隐藏层有5个神经元的BPNN模型优于隐藏层有6个神经元的模型。基于全数据点(full GPR)、回归量子集(SR GPR)和数据集子集(SD GPR)分别建立了3种GPR模型,采用平方指数(SE)协方差函数。全探地雷达优于SR探地雷达和SD探地雷达。总体结果表明,高斯过程模型优于LS-SVM和BPNN模型。探地雷达是一种有效的回归预测方法。近红外光谱法结合主成分分析法和探地雷达法对汽车润滑油中水分含量的测定具有较高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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