首页> 外文期刊>Journal of food quality >Classification and Prediction of Bee Honey Indirect Adulteration Using Physiochemical Properties Coupled with K-Means Clustering and Simulated Annealing-Artificial Neural Networks (SA-ANNs)
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Classification and Prediction of Bee Honey Indirect Adulteration Using Physiochemical Properties Coupled with K-Means Clustering and Simulated Annealing-Artificial Neural Networks (SA-ANNs)

机译:使用基于K-Mearing集群和模拟退火 - 人工神经网络(SA-ANN)的物理化学性质蜂蜂蜜间接掺假蜂蜂蜜间接掺杂的分类与预测

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The higher demand and limited availability of honey led to different forms of honey adulteration. Honey adulteration is either direct by addition of various syrups to natural honey or indirect by feeding honey bees with sugar syrups. Therefore, a need has emerged for reliable and cost-effective quality control methods to detect honey adulteration in order to ensure both safety and quality of honey. In this study, honey is adulterated by feeding honey bees with various proportions of sucrose syrup (0 to 100%). Various physiochemical properties of the adulterated honey are studied including sugar profile, pH, acidity, moisture, and color. The results showed that increasing sucrose syrup in the feed resulted in a decrease in glucose and fructose contents significantly, from 33.4 to 29.1% and 45.2 to 35.9%, respectively. Sucrose content, however, increased significantly from 0.19 to 1.8%. The pH value increased significantly from 3.04 to 4.63 with increase in sucrose feed. Acidity decreased slightly but nonsignificantly with increase in sucrose feed and varied between 7.0 and 4.00?meq/kg for 0% and 100% sucrose, respectively. Honey’s lightness ( L value) also increased significantly from 59.3 to 68.84 as sucrose feed increased. Other color parameters were not significantly changed by sucrose feed. K -means clustering is used to classify the level of honey adulteration by using the above physiological properties. The classification results showed that both glucose content and total sugar content provided 100% accurate classification while pH values provided the worst results with 52% classification accuracy. To further predict the percent honey adulteration, simulated annealing coupled with artificial neural networks (SA-ANNs) was used with sugar profile as an input. RBF-ANN was found to provide the best prediction results with SSE?=?0.073, RE?=?0.021, and overall R 2 ?=?0.992. It is concluded that honey sugar profile can provide an accurate and reliable tool for detecting indirect honey adulteration by sucrose solution.
机译:蜂蜜的需求和有限的可用性导致不同形式的蜂蜜掺杂。通过用糖糖浆喂养蜂蜜蜜蜂的自然蜂蜜或间接地将各种糖浆添加到天然蜂蜜或间接的蜂蜜掺假。因此,需要采取可靠且经济高效的质量控制方法来检测蜂蜜掺假的方法,以确保蜂蜜的安全和质量。在这项研究中,蜂蜜通过用各种比例的蔗糖糖浆(0至100%)喂养蜂蜜蜜蜂掺杂。研究了掺假蜂蜜的各种理化性质,包括糖曲线,pH,酸度,湿度和颜色。结果表明,饲料中的蔗糖糖浆增加导致葡萄糖和果糖含量显着降低,分别从33.4%到29.1%和45.2%至35.9%。然而,蔗糖含量显着增加到0.19至1.8%。 pH值从3.04增加到4.63显着增加,随着蔗糖饲料的增加。酸度略微下降但随着蔗糖饲料的增加而无情地减少,并且分别在7.0至4.00℃之间变化0%和100%蔗糖。随着蔗糖饲料的增加,蜂蜜的亮度(L值)也显着增加到59.3至68.84。蔗糖饲料没有显着改变其他颜色参数。 K -means聚类用于通过使用上述生理特性来分类蜂蜜掺假水平。分类结果表明,葡萄糖含量和总糖含量提供100%精确分类,而pH值提供了52%的分类精度的最差结果。为了进一步预测蜂蜜掺杂百分比,与人工神经网络(SA-ANN)耦合的模拟退火与糖曲线作为输入。发现RBF-ANN提供SSE的最佳预测结果?=?0.073,RE?= 0.021,总体R 2?= 0.992。结论是,蜂蜜糖型可以提供一种准确可靠的工具,用于通过蔗糖溶液检测间接蜂蜜掺杂。

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