Research on Rapid Gas Classification and Incremental Learning Based on Sensor Array

Jianyi Zhong, Lei Cheng, Qing-Xue Zeng
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Abstract

In the field of machine olfaction, odor recognition whose focus is to accurately classify odor information and improve efficiency, is one of the important research directions. In recent years, deep learning for gas identification has been used in some researches, which significantly improves the identification accuracy. As a variant of deep learning, incremental learning is widely used in the field of image classification and can effectively solve the problem of catastrophic forgetting in image classification. Incremental learning has not been practically used in gas identification research, this paper will try to use an incremental learning method to identify and classify multiple types of gases. The main objectives of the research are as follows: 1) The experimental data set was divided into two equal parts, a data preprocessing method was used to convert the sensor array data into gas images which would be the input of incremental learning. And the pre-part was trained and classified by the incremental learning network. 2) The latter part of the dataset was taked as a newly emerging gas dataset, which would be incrementally learned and classified by incremental learning model. This study used an open source gas dataset, applied machine learning and deep learning architecture to analyze and compare with the algorithm. The proposed supervised contrastive replay (SCR) was used for data training and classification in this study, achieving a 94.63% classification accuracy, and the training time is only 69.7s.
基于传感器阵列的气体快速分类与增量学习研究
在机器嗅觉领域,气味识别是一个重要的研究方向,其重点是准确分类气味信息,提高效率。近年来,一些研究将深度学习用于天然气识别,显著提高了识别精度。增量学习作为深度学习的一种变体,广泛应用于图像分类领域,能够有效解决图像分类中的灾难性遗忘问题。增量学习在气体识别研究中尚未得到实际应用,本文将尝试使用增量学习方法对多类型气体进行识别和分类。主要研究目标如下:1)将实验数据集分成两等份,采用数据预处理方法将传感器阵列数据转换为气体图像,作为增量学习的输入。并利用增量学习网络对预零件进行训练和分类。2)将数据集的后半部分作为新兴的气体数据集,采用增量学习模型对其进行增量学习和分类。本研究使用开源气体数据集,应用机器学习和深度学习架构对算法进行分析和比较。本研究将提出的监督对比回放(supervised contrast replay, SCR)方法用于数据训练和分类,分类准确率达到94.63%,训练时间仅为69.7s。
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