ZYNQ 平台上的电子鼻系统用于水果新鲜度分类

Yuan Huang, Xudong Ren, Yudong Wang, Dongbo Sun, Lei Xu, Feng Wu
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引用次数: 1

摘要

电子鼻是一种新型的仿生检测系统,广泛应用于食品安全行业。目前,大多数电子鼻系统将识别算法部署在PC上,这限制了电子鼻的可移植性。本文实现了一种基于ZYNQ7000硬件平台的水果新鲜度分类电子鼻。在硬件实现之前进行了软件仿真。根据传感器阵列的响应特性,提出了一种瞬态特征提取方法,以减少识别所需的时间。同时,提出了主成分分析-核fisher判别分析(PCA-KFDA)模型,对提取的特征进行降维处理。然后,设计了三点下降和Mann-Kendall趋势检验相结合的方法,使硬件电路能够自动检测到响应起始点。结果表明,基于支持向量机分类算法的PCA-KFDA约简模型比传统的主成分分析-线性判别分析模型(PCA-LDA)具有更高的分类精度。最后,我们在ZYNQ7000平台上实现了92.9%的水果新鲜度准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Electronic Nose System implemented on ZYNQ Platform for Fruits Freshness Classification
The electronic nose (e-nose) is a novel bionic detection system that is widely used in the food safety industry. Currently, most e-nose systems deploy the recognition algorithm on a PC, which limits the portability of the e-nose. This work implements an electronic nose based on the ZYNQ7000 hardware platform for fruit freshness classification. Software simulations were performed before the hardware implementation. According to the response characteristics of the sensor array, a transient feature extraction method is proposed to reduce the time required for recognition. Meanwhile, the principal component analysis-kernel fisher discriminant analysis (PCA-KFDA) model is proposed to reduce the dimensionality of the extracted features. Then, A combination of three-point descent and the Mann-Kendall trend test was designed to enable the hardware circuit to automatically detect the response onset point. The results show that based on the support vector machine classification algorithm, the PCA-KFDA reduction model has higher classification accuracy than the traditional principal component analysis-linear discriminant analysis model (PCA-LDA). Finally, we achieved 92.9% accuracy in fruit freshness on the ZYNQ7000 platform.
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