Abstract

A deep learning network is introduced to predict concentrations of gases in the underground coal mine enclosed region using various IoT-enabled gas sensors installed in a metallic gas chamber. The air is sucked automatically at specific intervals from the sealed-off site utilizing a solenoid valve, suction pump, and programmed microprocessor. The gas sensors monitor the gas content in the underground coal mine and communicate gas concentration to the surface server room through a wireless network and cloud storage media. The t-SNE_VAE_bi-LSTM model is proposed in this study as a prediction model that combines the t-SNE, VAE, and bi-LSTM networks. The proposed model's t-SNE method aims to minimize the dimensionality of the recorded gas concentration; and VAE layer intends to retrieve the inner characteristics of low-dimensional gas concentration. Finally, the given model's Bi-LSTM layer tries to forecast the concentrations of CH4, CO2, CO, O2, and H2 gases. The proposed model's prediction accuracy is compared with the existing two models, namely auto-regressive integrated average moving (ARIMA) and chaos time series (CHAOS). The experiment findings demonstrate that the t-SNE_VAE_bi-LSTM model forecasted mean square error (MSE) is more accurate, and it has lesser MSE value of 0.029 and 0.069 for CH4; 0.037 and 0.019 for CO2; 0.092 and 0.92 for CO; 1.881 and 1.892 for O2; and 1.235 and 1.200 for H2 than the ARIMA and CHAOS models, respectively.

Highlights

  • Due to the harsh and unpredicted working conditions in the underground coal mine, many accidents occurred (Qiao and Zeng 2011; Wang et al 2013)

  • Permissible limit and specification 1 % isolates electricity and 2 % remove personnel, 5 to15 % flammability limit (FL) in air, sensor type - infrared, and measuring range of 0–5 % 0.5 % time-weighted average (TWA), 3.0 % short-term exposure limits (STEL), 1.5 % ceiling limit (CL), and sensor type - infrared and measuring range 0–5 %. 0.005 % TWA, 0.04 % STEL and 200 parts per million CL, and 12.5 to 74.5 FL in air, sensor type - electrochemical, and measuring range 0–2000 ppm Greater than 19.5%, sensor type - electrochemical, and measuring range 0–25 % TLVs - 10 ppm TWA, 25 ppm STEL and 25 ppm CL, 4.0 to 75 % FL in air, sensor type - electrochemical, and measuring range 0– 400 ppm

  • The said five gas values had been correlated during training phases

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Summary

D Pandit Central Institute of Mining and Fuel Research CSIR

G.M. Prasad Central Mining Research Institute: Central Institute of Mining and Fuel Research CSIR. S.K. Mandal Central Mining Research Institute: Central Institute of Mining and Fuel Research CSIR. Read Full License t-SNE and variational auto-encoder with a bi-LSTM neural network-based model for prediction of gas concentration in a sealed-off area of underground coal mines. Prasanjit Dey · K Saurabh · C Kumar · D Pandit· SK Chaulya*· SK Ray · GM Prasad · SK Mandal

Introduction
Related works
System description
Problem scenario
The proposed method for real-time gas concentration prediction
Pre-processing of input data
Essential feature extraction using VAE layer
Prediction layer based on bi-LSTM
Prediction result
Findings
Conclusions

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