Electronic nose based on gas sensors and a machine-learning algorithm to discriminate potatoes according to the cultivated field nature

Ali Amkor, N. E. Barbri
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Abstract

This article assesses potatoes using an electronic nose according to the nature of the original fields of their harvest: traditionally treated with manure from domestic sheep and donkeys or with manure from chicken farms. A network of five commercial metal oxide sensors, a data card acquisition, a personal computer, and a data analysis and processing approach make up our electronic nose tool. The method of principal component analysis (PCA) was used for the classification of data from both two potatoes kinds and revealed that the first three principal components (PC1, PC2, and PC3) may explain 99.20 percent of the variance by recording a spectacular visual separation allowing each group to be identified.
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基于气体传感器的电子鼻和机器学习算法,根据耕地性质区分土豆
这篇文章使用电子鼻根据土豆收成的原始田地的性质来评估土豆:传统上用家畜羊和驴的粪便或养鸡场的粪便处理。一个由五个商用金属氧化物传感器组成的网络,一个数据卡采集,一台个人计算机,以及一个数据分析和处理方法组成了我们的电子鼻工具。主成分分析(PCA)方法用于两种马铃薯的数据分类,并显示前三个主成分(PC1, PC2和PC3)可以通过记录壮观的视觉分离来解释99.20%的方差,从而使每个组可以被识别。
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