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Wine quality rapid detection using a compact electronic nose system: Application focused on spoilage thresholds by acetic acid

机译:使用紧凑型电子鼻系统的葡萄酒质量快速检测:应用专注于醋酸的腐败阈值

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摘要

It is crucial for the wine industry to have methods like electronic nose systems (E-Noses) for real-time monitoring thresholds of acetic acid in wines, preventing its spoilage or determining its quality. In this paper, we prove that the portable and compact self-developed E-Nose, based on thin film semiconductor (SnO2) sensors and trained with an approach that uses deep Multilayer Perceptron (MLP) neural network, can perform early detection of wine spoilage thresholds in routine tasks of wine quality control. To obtain rapid and online detection, we propose a method of rising-window focused on raw data processing to find an early portion of the sensor signals with the best recognition performance. Our approach was compared with the conventional approach employed in E-Noses for gas recognition that involves feature extraction and selection techniques for preprocessing data, succeeded by a Support Vector Machine (SVM) classifier. The results evidence that is possible to classify three wine spoilage levels in 2.7 s after the gas injection point, implying in a methodology 63 times faster than the results obtained with the conventional approach in our experimental setup.
机译:对于葡萄酒行业来说,对于葡萄酒中的实时监测乙酸的实时监测阈值,它是至关重要的,以防止其腐败或确定其质量。在本文中,我们证明了基于薄膜半导体(SnO2)传感器的便携式和紧凑的自主开发的电子鼻,并采用了使用深层多层默认(MLP)神经网络的方法进行培训,可以进行早期检测葡萄酒腐败葡萄酒质量控制的常规任务中的阈值。为了获得快速和在线检测,我们提出了一种上升窗口的方法,专注于原始数据处理,以找到具有最佳识别性能的传感器信号的早期部分。我们的方法与用于气体识别的E-NOSE中采用的传统方法进行了比较,其涉及用于预处理数据的特征提取和选择技术,由支持向量机(SVM)分类器成功。结果证据可以在气体喷射点之后将三个葡萄酒腐败水平分类为2.7秒,暗示比我们实验设置中的传统方法获得的结果快63倍。

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