首页> 外文期刊>Analytical chemistry >GENETIC ALGORITHM-BASED PROTOCOL FOR COUPLING DIGITAL FILTERING AND PARTIAL LEAST-SQUARES REGRESSION - APPLICATION TO THE NEAR INFRARED ANALYSIS OF GLUCOSE IN BIOLOGICAL MATRICES
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GENETIC ALGORITHM-BASED PROTOCOL FOR COUPLING DIGITAL FILTERING AND PARTIAL LEAST-SQUARES REGRESSION - APPLICATION TO THE NEAR INFRARED ANALYSIS OF GLUCOSE IN BIOLOGICAL MATRICES

机译:基于遗传算法的数字滤波和部分最小二乘回归耦合协议-在生物基质中葡萄糖近红外分析中的应用

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A multivariate calibration procedure is described that is based on the use of a genetic algorithm (GA) to guide the coupling of bandpass digital filtering and partial least-squares (PLS) regression, The measurement of glucose in three different biological matrices with near-infrared spectroscopy is employed to develop this protocol, The GA is employed to optimize the position and width of the bandpass digital filter, the spectral range for PLS regression, and the number of PLS factors used in building the calibration model, The optimization of these variables is difficult because the values of the variables employ different units, resulting in a tendency for local optima to occur on the response surface of the optimization, Two issues are found to be critical to the success of the optimization: the configuration of the GA and the development of an appropriate fitness function, An integer representation for the GA is employed to overcome the difficulty in optimizing variables that are dissimilar, and the optimal GA configuration is found through experimental design methods, Three fitness function calculations are compared for their ability to lead the GA to better calibration models, A fitness function based on the combination of the mean-squared error in the calibration set data, the mean-squared error in the monitoring set data, and the number of PLS factors raised to a weighting factor is found to perform best, Multiple random drawings of the calibration and monitoring sets are also found to improve the optimization performance, Using this fitness function and three random drawings of the calibration and monitoring sets, the GA found calibration models that required fewer PLS factors yet had similar or better prediction abilities compared to calibration models found through an optimization protocol based on a grid search method.
机译:描述了一种多元校正程序,该程序基于遗传算法(GA)的使用,以指导带通数字滤波和偏最小二乘(PLS)回归的耦合,使用近红外测量三种不同生物基质中的葡萄糖使用光谱学开发此协议,使用GA优化带通数字滤波器的位置和宽度,PLS回归的光谱范围以及用于建立校准模型的PLS因子数,这些变量的优化为困难,因为变量的值采用不同的单位,从而导致在优化的响应面上出现局部最优的趋势。发现了两个对优化成功至关重要的问题:遗传算法的配置和开发适当的适应度函数的表示形式,采用GA的整数表示来克服优化d变量的困难相似,并且通过实验设计方法找到了最佳的GA配置,比较了三种适应度函数计算将GA引向更好的校准模型的能力,基于校准集数据中均方误差的组合的适应度函数,发现监视集数据中的均方误差以及提高到加权因子的PLS因子的数量执行得最好,还发现了校准和监视集的多个随机图以提高优化性能,函数和校准和监视集的三个随机图形,与通过网格搜索方法通过优化协议找到的校准模型相比,GA发现了需要较少PLS因子但具有相似或更好的预测能力的校准模型。

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