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Validation of the rapid detection approach for enhancing the electronic nose systems performance, using different deep learning models and support vector machines

机译:验证快速检测方法,用于增强电子鼻系统性能,使用不同的深层学习模型和支持向量机

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摘要

Real-time gas classification is an essential issue and challenge in applications such as food and beverage quality control, accident prevention in industrial environments, for instance. In recent years, the Deep Learning (DL) models have shown great potential to classify and forecast data in diverse problems, even in the electronic nose (E-Nose) field. In this work, a Support Vector Machine (SVM) algorithm and three different DL models were used to validate the rapid detection approach (based on processing an early portion of raw signals and a rising window protocol) over diverse measurement conditions. We performed a set of experiments with five different E-Nose databases, including fifteen datasets to be used with these algorithms. Based on the obtained results, we concluded that the proposed approach has a high potential and reduces the response time for making E-nose forecasts. Because in more than 60 % of the cases, it achieved reliable estimates using only the first 30 % or fewer of measurement data (counted after the gas injection starts). The findings suggest that the rapid detection approach generates reliable forecasting models using different classification methods. Moreover, SVM seems to achieve the best accuracy and better training time.
机译:例如,实时气体分类是食品和饮料质量控制,工业环境事故预防等应用中的重要问题和挑战。近年来,即使在电子鼻子(电子鼻子)场中,深度学习(DL)模型也表明了分类和预测数据的巨大潜力。在这项工作中,使用支持向量机(SVM)算法和三种不同的DL模型来验证在不同的测量条件下的快速检测方法(基于处理原始信号的早期部分和上升窗口协议)。我们使用五种不同的电子鼻数据库进行了一组实验,包括将与这些算法一起使用的十五个数据集。根据所获得的结果,我们得出结论,该方法具有很大的潜力,并减少了对电子鼻预测的响应时间。由于在60%以上的情况下,它可以仅使用前30%或更少的测量数据(在气体喷射开始后计算)实现可靠的估计。研究结果表明,快速检测方法使用不同的分类方法产生可靠的预测模型。此外,SVM似乎达到了最佳准确性和更好的培训时间。

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