An Electronic Nose for Co Concentration Prediction Based on Gl-Tcn

28 Pages Posted: 1 Mar 2023

See all articles by Xiaoyu Li

Xiaoyu Li

Guangxi University

Qingming Jiang

Guangxi University

Sen Ni

Guangxi University

Yang Xu

Guangxi University

Min Xu

Xihua University

Pengfei Jia

Guangxi University

Abstract

The air has a direct impact on both life and health. In most situations, the damage caused by excessive inhalation of carbon monoxide (CO) is irreversible. In order to prevent further catastrophes, these topics are more deserving of our attention and effective action. According to the available research, electronic nose (E-nose) consistently exhibits great performance in additional sectors while offering fresh approaches to problem-solving. However, the neural networks currently used in E-nose are still somewhat constrained, and the time-series dataset cannot be processed to its fullest potential by using conventional neural networks. In this paper, we propose an improved temporal convolutional networks (TCN) to complete reliable training on high-dimensional time series datasets. GL-TCN exhibits a better fit even after decreasing the data, when compared to recurrent neural networks (RNN), long short-term memory (LSTM), TCN and gate recurrent unit (GRU).

Keywords: CO concentration prediction, Gaussian error linear unit, LeveledInit, Electronic nose, TCN

Suggested Citation

Li, Xiaoyu and Jiang, Qingming and Ni, Sen and Xu, Yang and Xu, Min and Jia, Pengfei, An Electronic Nose for Co Concentration Prediction Based on Gl-Tcn. Available at SSRN: https://ssrn.com/abstract=4374304 or http://dx.doi.org/10.2139/ssrn.4374304

Xiaoyu Li

Guangxi University ( email )

East Daxue Road #100
Nanning, 530004
China

Qingming Jiang

Guangxi University ( email )

East Daxue Road #100
Nanning, 530004
China

Sen Ni

Guangxi University ( email )

East Daxue Road #100
Nanning, 530004
China

Yang Xu

Guangxi University ( email )

East Daxue Road #100
Nanning, 530004
China

Min Xu

Xihua University ( email )

Chengdu, 610039
China

Pengfei Jia (Contact Author)

Guangxi University ( email )

East Daxue Road #100
Nanning, 530004
China

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