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首页> 外文期刊>Analytica chimica acta >Classification of apple beverages using artificial neural networks with previous variable selection
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Classification of apple beverages using artificial neural networks with previous variable selection

机译:使用人工神经网络和先前的变量选择对​​苹果饮料进行分类

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Parallel to increased consumption of fruit juices over the last years (thanks to their unrivalled nutritional benefits),fraudulent fruit juices can be found sometimes on the food supply chain.Infrared spectrometry (IR) is a fast and convenient technique to perform screening analyses to assess the quantity of pure juice in commercial beverages.The IR information has some "fuzzy" characteristics (random noise,unclear chemical assignment,etc.) and,therefore,advanced computation techniques (e.g.,artificial neural networks (ANNs)) are needed to develop ad-hoc classification models.Dissapointingly,the large number of variables derived from IR spectrometry makes ANNs to take too much time to train.This work studies two different genetic algorithms (GAs) intended to select a small number of wave numbers which are to be used to develop classification models,"pruned search" and "fixed search" (in both cases a steady state GA algorithm with uniform crossover where one of the parents is chosen following the "roulette-wheel" approach,was used).In order to compare results of different assays,the number of selected variables was fixed using an external criterion (a parametric model based on Procrustes rotation).Usefulness of the GAs is evaluated by developing PLS,potential functions,SIMCA and ANNs models to classify apple juice-based commercial beverages.
机译:近年来,由于果汁消费量的增加(由于其无与伦比的营养益处),有时会在食品供应链中发现欺诈性果汁。红外光谱(IR)是一种快速便捷的技术,可进行筛分分析以评估IR信息具有一些“模糊”特征(随机噪声,化学成分不清楚等),因此需要先进的计算技术(例如人工神经网络(ANN))来开发临时分类模型。令人失望的是,红外光谱法衍生的大量变量使人工神经网络花费太多时间进行训练。这项工作研究了两种不同的遗传算法(GA),这些算法旨在选择少量的波数。用于开发分类模型,“修剪的搜索”和“固定的搜索”(在两种情况下均采用具有均匀交叉的稳态GA算法,其中选择了父代之一)为了比较不同分析的结果,使用外部标准(基于Procrustes旋转的参数模型)固定所选变量的数量。通过评估GA的有效性开发PLS,潜在功能,SIMCA和ANNs模型对基于苹果汁的商业饮料进行分类。

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