A PROPRIETARILY DEVELOPED BIONIC OLFACTORY SYSTEM USED FOR RAPID DETECTION OF DETERIORATED REFRIGERATED-STORED APPLES

Hui Tian,∗ Wenshen Jia,∗,∗∗,∗∗∗,∗∗∗∗ Jie Ma,∗ Jihua Wang,∗∗,∗∗∗,∗∗∗∗ and Jianxiong Hao∗∗∗∗∗

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