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Gas recognition method based on the deep learning model of sensor array response map

机译:基于传感器阵列响应图的深层学习模型的气体识别方法

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摘要

It is important to detect and recognize the unknown gases or VOCs (Volatile Organic Compounds) in industrial safety issues. Electronic nose is a novel and portable method to detect the VOCs with high accuracy combined with sensor array and artificial intelligence algorithm. The results indicated that the multidimensional dynamic response signals of the sensor array can be viewed as the image form. Thus, a new method coupled dynamic response map with deep learning model (DLM) was proposed to improve the accuracy of the sensor array. The error-correcting output codes (ECOC) model with support vector machine (SVM) learners was applied to discriminate different VOCs. The results showed that the model with the data from the sensor array classified the VOCs more accurately than that with just single sensor. Further, a simple DLM network was trained to classify the VOCs with the accuracy of 92 %. Then the transferred VGG-19 model was further adapted to improve the generalization property of DLM with the accuracy of 90 %. Moreover, all sensors' responses at certain time were normalized before building the model, which enhanced the prediction accuracy to 96 % for simple DLM and 94 % for transferred VGG-19. Finally, the concentrations of different substances were predicted with SVM and DLM. The results showed that the prediction error of SVM and DLM with multidimensional response map is lower that with the data from single sensor. Therefore, it is a feasible tool to detect VOCs with just one sensor module using the response map-DLM method proposed in this research.
机译:重要的是要在工业安全问题中检测和识别未知的气体或VOC(挥发性有机化合物)。电子鼻子是一种新颖的和便携式方法,用于检测高精度的VOC,与传感器阵列和人工智能算法相结合。结果表明,可以将传感器阵列的多维动态响应信号视为图像形式。因此,提出了一种具有深度学习模型(DLM)的新方法耦合动态响应图(DLM)以提高传感器阵列的精度。使用支持向量机(SVM)学习者(SVM)学习者的纠错输出代码(ECOC)模型用于区分不同的VOC。结果表明,来自传感器阵列的数据的模型比单个传感器更准确地将VOC分为VOC。此外,培训简单的DLM网络以将VOC分类为92%的准确性。然后,转移的VGG-19模型进一步适用于改善DLM的泛化性能,精度为90%。此外,在构建模型之前,所有传感器在某些时间的响应被归一化,这使得简单的DLM的预测精度增强至96%,而传送的VGG-19的94%。最后,用SVM和DLM预测不同物质的浓度。结果表明,对于来自单个传感器的数据,SVM和DLM的预测误差较低。因此,它是一种可行的工具,可以使用本研究中提出的响应图-DLM方法使用一个传感器模块来检测VOC。

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