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基于机器学习的便携式电子鼻的设计与验证。

Design and Validation of a Portable Machine Learning-Based Electronic Nose.

机构信息

Applied Optics Laboratory, School of Mechanical Engineering, Purdue University, West Lafayette, IN 47907, USA.

出版信息

Sensors (Basel). 2021 Jun 7;21(11):3923. doi: 10.3390/s21113923.

Abstract

Volatile organic compounds (VOCs) are chemicals emitted by various groups, such as foods, bacteria, and plants. While there are specific pathways and biological features significantly related to such VOCs, detection of these is achieved mostly by human odor testing or high-end methods such as gas chromatography-mass spectrometry that can analyze the gaseous component. However, odor characterization can be quite helpful in the rapid classification of some samples in sufficient concentrations. Lower-cost metal-oxide gas sensors have the potential to allow the same type of detection with less training required. Here, we report a portable, battery-powered electronic nose system that utilizes multiple metal-oxide gas sensors and machine learning algorithms to detect and classify VOCs. An in-house circuit was designed with ten metal-oxide sensors and voltage dividers; an STM32 microcontroller was used for data acquisition with 12-bit analog-to-digital conversion. For classification of target samples, a supervised machine learning algorithm such as support vector machine (SVM) was applied to classify the VOCs based on the measurement results. The coefficient of variation (standard deviation divided by mean) of 8 of the 10 sensors stayed below 10%, indicating the excellent repeatability of these sensors. As a proof of concept, four different types of wine samples and three different oil samples were classified, and the training model reported 100% and 98% accuracy based on the confusion matrix analysis, respectively. When the trained model was challenged against new sets of data, sensitivity and specificity of 98.5% and 98.6% were achieved for the wine test and 96.3% and 93.3% for the oil test, respectively, when the SVM classifier was used. These results suggest that the metal-oxide sensors are suitable for usage in food authentication applications.

摘要

挥发性有机化合物(VOCs)是由各种物质排放的化学物质,如食物、细菌和植物。虽然存在与这些 VOCs 密切相关的特定途径和生物学特征,但这些 VOCs 的检测主要通过人类嗅觉测试或气相色谱-质谱等高端方法来实现,这些方法可以分析气态成分。然而,气味特征分析对于某些在足够浓度下的样品的快速分类非常有帮助。成本较低的金属氧化物气体传感器有可能在无需大量训练的情况下实现相同类型的检测。在这里,我们报告了一种便携式、电池供电的电子鼻系统,该系统利用多个金属氧化物气体传感器和机器学习算法来检测和分类 VOCs。设计了一个内部电路,该电路使用了十个金属氧化物传感器和电压分压器;STM32 微控制器用于数据采集,具有 12 位模数转换。为了对目标样品进行分类,应用了支持向量机(SVM)等有监督的机器学习算法,根据测量结果对 VOCs 进行分类。十个传感器中有八个的变异系数(标准差除以平均值)低于 10%,这表明这些传感器具有出色的重复性。作为概念验证,对四种不同类型的葡萄酒样品和三种不同的油样进行了分类,基于混淆矩阵分析,训练模型分别报告了 100%和 98%的准确率。当使用 SVM 分类器对新数据集进行挑战时,对葡萄酒测试的灵敏度和特异性分别达到了 98.5%和 98.6%,对油测试的灵敏度和特异性分别达到了 96.3%和 93.3%。这些结果表明,金属氧化物传感器适合用于食品认证应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ce3e/8201040/48235258ded4/sensors-21-03923-g001.jpg

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