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
Summary
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
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.