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首页> 外文期刊>Sensors Journal, IEEE >Robust Classification of Largely Corrupted Electronic Nose Data Using Deep Neural Networks
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Robust Classification of Largely Corrupted Electronic Nose Data Using Deep Neural Networks

机译:使用深神经网络的强大损坏电子鼻数据的鲁棒分类

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Data loss for electronic noses may occur because of the sensor’s installation environment or from electrical disturbances. As a result, electronic noses may experience difficulties when identifying gases. This paper proposes two deep neural network-based functions for identifying gases. First, a denoising auto-encoder based on the corruption reconstruction method is proposed for electronic nose data to solve this problem. Second, a convolutional neural network-based gas-classifying model is proposed. Although the electronic nose data are highly discriminative, they are sensitive to the corruption of information; hence, they require an efficient restoration method for practical use. From the experiments we demonstrate that the proposed denoising auto-encoder provides a strong restoration capability, and the convolutional neural network-based classifier successfully discriminates the gas data samples with a classification rate over 95% even when the data loss is 50%.
机译:由于传感器的安装环境或电气干扰,电子鼻子的数据丢失可能发生。结果,电子鼻子可能在识别气体时遇到困难。本文提出了两个基于神经网络的识别气体的功能。首先,提出了一种基于腐败重建方法的去噪自动编码器,用于电子鼻数据以解决此问题。其次,提出了一种卷积神经网络的气体分类模型。虽然电子鼻子数据是高度辨别的,但它们对信息的损坏感到敏感;因此,它们需要有效的恢复方法进行实际使用。从实验来看,我们证明所提出的去噪自动编码器提供了强大的恢复能力,即使数据丢失为50%,卷积神经网络的基于卷积性的基于神经网络的分类器也成功地将气体数据样本判断出超过95%的分类率。

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