Non-destructive test to detect adulteration of rice using gas sensors coupled with chemometrics methods

IF 2 4区 农林科学 Q2 AGRONOMY
Vali Rasooli Sharabiani, Ali Khorramifar, H. Karami, Jesús Lozano, S. Tabor, Yousef Darvishi, M. Gancarz
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引用次数: 1

Abstract

. In order to accurately determine and evaluate the odour of rice, it is necessary to identify the substances that affect that odour and to develop methods to determine their amounts. For more than three decades, researchers have been studying the factors that produce and influence the aroma of rice. An electronic nose can be used to detect the volatile compounds of rice, while an olfactory machine is capable of classifying and detecting the variety, origin, and storage time of rice with a high degree of effi - ciency. This study aimed to investigate the efficacy of electronic noses and other chemometric methods such as principal component analysis, linear discriminant analysis, and the Artificial Neural Network as a cost-effective, rapid, and non-destructive method for the detection of pure and adulterated rice varieties. Therefore, an electronic nose equipped with nine metal oxide semiconductor sensors with low power consumption was used. The results showed that the amount of variance accounted for by PC1 and PC4 was 98% for the samples used. Also, the classifi - cation accuracy of the linear discriminant analysis and Artificial Neural Network methods were 100%, respectively. The Support Vector Machines method (including Nu-SVM and C-SVM) was also used, which, in all its functions except the polynomial function, produced 100% accuracy in terms of training and validation.
气体传感器与化学计量学相结合的大米掺假无损检测
为了准确地确定和评估大米的气味,有必要确定影响气味的物质,并制定确定其数量的方法。三十多年来,研究人员一直在研究产生和影响大米香气的因素。电子鼻可以用来检测大米的挥发性化合物,而嗅觉机器能够高效地对大米的品种、产地和储存时间进行分类和检测。本研究旨在研究电子鼻和其他化学计量方法(如主成分分析、线性判别分析和人工神经网络)作为一种经济高效、快速、无损的检测纯大米和掺假大米品种的方法的有效性。因此,使用了配备有九个低功耗金属氧化物半导体传感器的电子鼻。结果表明,PC1和PC4对所用样本的方差为98%。此外,线性判别分析和人工神经网络方法的分类准确率分别为100%。还使用了支持向量机方法(包括Nu-SVM和C-SVM),该方法在除多项式函数外的所有函数中,在训练和验证方面都产生了100%的准确性。
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来源期刊
International Agrophysics
International Agrophysics 农林科学-农艺学
CiteScore
3.60
自引率
9.10%
发文量
27
审稿时长
3 months
期刊介绍: The journal is focused on the soil-plant-atmosphere system. The journal publishes original research and review papers on any subject regarding soil, plant and atmosphere and the interface in between. Manuscripts on postharvest processing and quality of crops are also welcomed. Particularly the journal is focused on the following areas: implications of agricultural land use, soil management and climate change on production of biomass and renewable energy, soil structure, cycling of carbon, water, heat and nutrients, biota, greenhouse gases and environment, soil-plant-atmosphere continuum and ways of its regulation to increase efficiency of water, energy and chemicals in agriculture, postharvest management and processing of agricultural and horticultural products in relation to food quality and safety, mathematical modeling of physical processes affecting environment quality, plant production and postharvest processing, advances in sensors and communication devices to measure and collect information about physical conditions in agricultural and natural environments. Papers accepted in the International Agrophysics should reveal substantial novelty and include thoughtful physical, biological and chemical interpretation and accurate description of the methods used. All manuscripts are initially checked on topic suitability and linguistic quality.
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