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Wavelength selection to increase robustness of the multivariate calibration model in near infrared spectroscopy

机译:选择波长以提高近红外光谱中多元校准模型的鲁棒性

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Genetic algorithm is a non-derived random optimization method based on the regulations of nature selection and evolution. Generally, when genetic algorithm is applied to wavelength selection, only how to improve the prediction accuracy of a regression model is concerned. But the robustness of a regression model, that is, the anti-interference ability towards external measuring conditions variance (such as the ambient temperature, place and so on), is usually ignored. Therefore, when the measuring conditions of the predicted samples change, the regression model would predict the measured samples with high prediction errors. In this paper, genetic algorithm combined with experimental design method was studied to increase the robustness of the multivariate calibration model. In our experiments, the training set was divided into the calibration set and the monitor set to establish the regression model. The spectra of the calibration set samples were measured under the ordinary measuring conditions. The measuring conditions when obtaining the monitor set sample spectra could be arranged according to experimental design method. Kennard/Stone algorithm was used to select monitor set samples from training set. The calibration model could be built with the calibration set samples and optimized with the monitor set samples measured under the designed measuring conditions. And then the validation set samples, which were independent of the training set ones, were employed to evaluate the prediction ability of the regression model. In order to obtain a regression model with high prediction accuracy and robustness, the spectral information caused by the changes of measuring conditions need to be considered and those wavelengths which were easily interfered by external measuring factors need to be rejected when the calibration model was trained. In this paper, the modified wavelength selection method of genetic algorithm was applied to the temperature experiments of the glucose aqueous solution samples. Results revealed that not only fewer wavelengths or principal components were needed to build the calibration model but also the robustness and prediction accuracy of the calibration model were greatly improved. This modified method not only makes the regression model insensitive to external measuring conditions, but also could be applied to the calibration transfer between different instruments of the same type.
机译:遗传算法是一种基于自然选择和进化规律的非派生随机优化方法。通常,在将遗传算法应用于波长选择时,仅关注如何提高回归模型的预测精度。但是,通常会忽略回归模型的鲁棒性,即对外部测量条件变化(例如环境温度,位置等)的抗干扰能力。因此,当预测样品的测量条件发生变化时,回归模型将以较高的预测误差预测测量样品。本文研究了遗传算法与实验设计方法相结合的方法,以提高多元校正模型的鲁棒性。在我们的实验中,训练集分为校准集和监控集,以建立回归模型。校准组样品的光谱是在常规测量条件下测量的。获得监测仪设置的样品光谱时的测量条件可以根据实验设计方法进行安排。 Kennard / Stone算法用于从训练集中选择监视集样本。可以使用校准集样本构建校准模型,并使用在设计的测量条件下测量的监控集样本进行优化。然后使用独立于训练集的验证集样本来评估回归模型的预测能力。为了获得具有高预测精度和鲁棒性的回归模型,在训练校准模型时,需要考虑由测量条件的变化引起的光谱信息,并且必须拒绝那些容易受到外部测量因素干扰的波长。本文将改进的遗传算法波长选择方法应用于葡萄糖水溶液样品的温度实验。结果表明,建立校正模型不仅需要更少的波长或主要成分,而且大大提高了校正模型的鲁棒性和预测精度。这种改进的方法不仅使回归模型对外部测量条件不敏感,而且可以应用于同一类型的不同仪器之间的校准传递。

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