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首页> 外文期刊>Journal of near infrared spectroscopy >A comparison of non-linear regression methods for improved on-line near infrared spectroscopic analysis of a sugarcane quality measure
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A comparison of non-linear regression methods for improved on-line near infrared spectroscopic analysis of a sugarcane quality measure

机译:非线性回归方法对甘蔗质量措施改善近红外光谱分析的影响

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On-line near infrared (NIR) spectroscopic analysis systems play an important role in assessing the quality of sugarcane in Australia. As quality measures are used to calculate the payment made to growers, it is imperative that NIR models are both accurate and robust. Machine learning and non-linear modelling approaches have been explored as methods for developing improved NIR models in a variety of industrial settings, yet there has been little research into their application to cane quality measures. The objective of this paper was to compare chemometric models of commercial cane sugar (CCS) based on four calibration techniques. CCS was estimated using partial least squares regression (PLS), support vector regression (SVR), artificial neural networks (ANNs) and gradient boosted trees (GBTs). Model performance was assessed on an independent validation data set using root mean square error of prediction (RMSEP) and r(2) values. SVR (RMSEP = 0.37%; r(2) = 0.92) and ANN (RMSEP= 0.36%; r(2) = 0.93) performed similarly to PLS (RMSEP = 0.37%; r(2) = 0.92) on the validation data set, while GBT exhibited a much lower skill (RMSEP = 0.51%; r(2) = 0.85). Analysis of important wavelengths in each model showed that PLS regression, SVR and ANN techniques emphasized the importance of similar spectral regions. Future research should consider testing model robustness over seasons and/or regions. Comparisons of chemometric models should consider reporting variable importance as a way of understanding how models use spectral information.
机译:在线近红外线(NIR)光谱分析系统在评估澳大利亚甘蔗的质量方面发挥着重要作用。随着质量措施用于计算给种植者的付款,NIR模型必须准确且强大。机器学习和非线性建模方法已被探索为在各种工业环境中开发改进的NIR模型的方法,但它们对甘蔗质量措施的应用几乎没有研究。本文的目的是基于四种校准技术比较商业蔗糖(CCS)的化学计量模型。使用部分最小二乘回归(PLS),支持向量回归(SVR),人工神经网络(ANNS)和梯度提升树(GBT)估计CCS。在使用预测(RMSEP)和R(2)值的均方根误差的独立验证数据集上评估模型性能。 SVR(RMSEP = 0.37%; R(2)= 0.92)和ANN(RMSEP = 0.36%; R(2)= 0.93)与PLS(RMSEP = 0.37%; R(2)= 0.92)进行验证数据进行套装,而GBT技能较低(RMSEP = 0.51%; R(2)= 0.85)。分析每个模型中的重要波长显示,PLS回归,SVR和ANN技术强调了类似光谱区域的重要性。未来的研究应考虑测试模型稳健性超过季节和/或地区。化学计量模型的比较应考虑报告可变重要性,作为理解模型如何使用光谱信息的方式。

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