Yuan Lei-Ming, You Lifan, Yang Xiaofeng, Chen Xiaojing, Huang Guangzao, Chen Xi, Shi Wen, Sun Yiye
College of Electrical & Electronic Engineering, Wenzhou University, Wenzhou 325035, China.
Foods. 2022 Apr 11;11(8):1095. doi: 10.3390/foods11081095.
In order to reduce the uncertainty of the genetic algorithm (GA) in optimizing the near-infrared spectral calibration model and avoid the loss of spectral information of the unselected variables, a strategy of fusing consensus models is proposed to measure the soluble solids content (SSC) in peaches. A total of 266 peach samples were collected at four arrivals, and their interactance spectra were scanned by an integrated analyzer prototype, and then an internal index of SSC was destructively measured by the standard refractometry method. The near-infrared spectra were pre-processed with mean centering and were selected successively with a genetic algorithm (GA) to construct the consensus model, which was integrated with two member models with optimized weightings. One was the conventional partial least square (PLS) optimized with GA selected variables (PLS), and the other one was the derived PLS developed with residual variables after GA selections (PLS). The performance of PLS models showed some useful spectral information related to peaches' SSC and someone performed close to the full-spectral-based PLS model. Among these 10 runs, consensus models obtained a lower root mean squared errors of prediction (RMSEP), with an average of 1.106% and standard deviation (SD) of 0.0068, and performed better than that of the optimized PLS models, which achieved a RMSEP of average 1.116% with SD of 0.0097. It can be concluded that the application of fusion strategy can reduce the fluctuation uncertainty of a model optimized by genetic algorithm, fulfill the utilization of the spectral information amount, and realize the rapid detection of the internal quality of the peach.
为了降低遗传算法(GA)在优化近红外光谱校准模型时的不确定性,并避免未选择变量的光谱信息丢失,提出了一种融合共识模型的策略来测量桃子中的可溶性固形物含量(SSC)。共采集了四个批次的266个桃子样本,用集成分析仪原型扫描其漫反射光谱,然后用标准折射法破坏性测量SSC的内部指标。对近红外光谱进行均值中心化预处理,并用遗传算法(GA)依次选择变量来构建共识模型,该模型与两个具有优化权重的成员模型相结合。一个是用GA选择变量优化的传统偏最小二乘法(PLS)(PLS),另一个是用GA选择后的残差变量开发的衍生PLS(PLS)。PLS模型的性能显示了一些与桃子SSC相关的有用光谱信息,并且有人的表现接近基于全光谱的PLS模型。在这10次运行中,共识模型获得了较低的预测均方根误差(RMSEP),平均为1.106%,标准差(SD)为0.0068,并且比优化后的PLS模型表现更好,后者的RMSEP平均为1.116%,SD为0.0097。可以得出结论,融合策略的应用可以降低遗传算法优化模型的波动不确定性,实现光谱信息量的利用,并实现桃子内部品质的快速检测。