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Fast and Noninvasive Determination of Viscosity of Lubricating Oil Based on Visible and Near Infrared Spectroscopy

机译:基于可见光和近红外光谱的快速无创测定润滑油粘度的方法

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Visible and near infrared (Vis/NIR) spectroscopy was investigated for the fast and nondestructive determination of viscosity of lubricating oil. A total of 150 oil samples were scanned, and different calibration models were developed with the pretreatment of smoothing and standard normal variate. The input variables of calibration were the principal component selected by principal component analysis (PCA) and characteristic wavelengths selected by successive projections algorithm (SPA). The calibration model were developed using partial least squares (PLS), multiple linear regression (MLR) and back propagation neural networks (BPNN). The results indicated that PCA-BPNN and SPA-BPNN models were better than the linear models (PCA-PLS, PCA-MLR, SPA-PLS and SPA-MLR). The correlation coefficients were 0.971 for PCA-BPNN and 0.964 for SPA-BPNN. This demonstrated that BPNN could make good use of the nonlinear information in spectral data, and SPA was a powerful way for the selection of characteristic wavelengths. The selected wavelengths were helpful for the development of portable lubricating oil viscosity detection instrument.
机译:对可见光和近红外(Vis / NIR)光谱进行了研究,以快速,无损地测定润滑油的粘度。总共对150个油样进行了扫描,并通过平滑和标准正态变量的预处理开发了不同的校准模型。校准的输入变量是通过主成分分析(PCA)选择的主成分和通过连续投影算法(SPA)选择的特征波长。使用偏最小二乘(PLS),多元线性回归(MLR)和反向传播神经网络(BPNN)开发了校准模型。结果表明,PCA-BPNN和SPA-BPNN模型优于线性模型(PCA-PLS,PCA-MLR,SPA-PLS和SPA-MLR)。 PCA-BPNN的相关系数为0.971,SPA-BPNN的相关系数为0.964。这表明BPNN可以很好地利用光谱数据中的非线性信息,而SPA是选择特征波长的有力方法。选择的波长有助于便携式润滑油粘度检测仪的开发。

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