Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Research on Coal and Gas Outburst Warning from Missing of Samples

View through CrossRef
In order to improve the prediction accuracy of coal and gas outburst in the case of missing data, a coal and gas outburst prediction model based on MICE_NN interpolation algorithm and improved Pathfinder Algorithm (IPFA) optimized Extreme Learning Machine (ELM) is proposed. Firstly, the correlation analysis of various indicators affected by coal and gas outburst is carried out, and the MICE_NN algorithm is used to interpolate the missing values, which is easy to obtain more sufficient information from incomplete data sets and improve the prediction effect and accuracy of the model. Secondly, the Pathfinder algorithm is jointly improved by introducing the evolutionary boundary constraint processing scheme, Levy flight strategy and group fitness variance strategy to improve its global optimization ability, so as to optimize the relevant parameters of ELM and construct the coal and gas outburst prediction model. Finally, the measured data interpolated by MICE_NN are used as samples for experimental verification, and the proposed algorithm is compared with single machine learning and ensemble algorithms. The results show that the data quality based on MICE_NN interpolation is significantly better than the data without interpolation. The classification accuracy, recall rate and   of IPFA_ELM model based on MICE_NN interpolation are significantly higher than those of other comparison models. It provides a new idea and method for coal and gas outburst prediction, and provides a strong reference basis for the next step of gas outburst prevention and control.
Auricle Global Society of Education and Research
Title: Research on Coal and Gas Outburst Warning from Missing of Samples
Description:
In order to improve the prediction accuracy of coal and gas outburst in the case of missing data, a coal and gas outburst prediction model based on MICE_NN interpolation algorithm and improved Pathfinder Algorithm (IPFA) optimized Extreme Learning Machine (ELM) is proposed.
Firstly, the correlation analysis of various indicators affected by coal and gas outburst is carried out, and the MICE_NN algorithm is used to interpolate the missing values, which is easy to obtain more sufficient information from incomplete data sets and improve the prediction effect and accuracy of the model.
Secondly, the Pathfinder algorithm is jointly improved by introducing the evolutionary boundary constraint processing scheme, Levy flight strategy and group fitness variance strategy to improve its global optimization ability, so as to optimize the relevant parameters of ELM and construct the coal and gas outburst prediction model.
Finally, the measured data interpolated by MICE_NN are used as samples for experimental verification, and the proposed algorithm is compared with single machine learning and ensemble algorithms.
The results show that the data quality based on MICE_NN interpolation is significantly better than the data without interpolation.
The classification accuracy, recall rate and   of IPFA_ELM model based on MICE_NN interpolation are significantly higher than those of other comparison models.
It provides a new idea and method for coal and gas outburst prediction, and provides a strong reference basis for the next step of gas outburst prevention and control.

Related Results

DETERMINATION OF CONTROL FACTORS AFFECTING THE PROBABILITY OF A SUDDEN OUTBURST OF COAL AND GAS IN A BREAKAGE FACE
DETERMINATION OF CONTROL FACTORS AFFECTING THE PROBABILITY OF A SUDDEN OUTBURST OF COAL AND GAS IN A BREAKAGE FACE
Purpose. To establish priority (control) factors affecting the probability of a sudden outburst of coal and gas in a breakage face, which will allow making optimal technological de...
Simulation study on disaster evolution of ventilation system during coal and gas outburst
Simulation study on disaster evolution of ventilation system during coal and gas outburst
Abstract In order to solve the serious secondary disasters of the gas overrun or gas explosion, which is caused by coal and gas outburst in mine. In this paper, the equatio...
Coal
Coal
AbstractCoal is an organic, combustible, rock‐like natural substance that occurs in various forms from hard and brittle anthracite to soft and friable lignite. Coal is sometimes cl...
Outburst prediction and influencing factors analysis based on Boruta-Apriori and BO-SVM algorithms
Outburst prediction and influencing factors analysis based on Boruta-Apriori and BO-SVM algorithms
The influencing factors of coal and gas outburst are complex, and now the accuracy and efficiency of outburst prediction are not high. In order to obtain the effective features fro...
Study on Safety Tunneling Technology of Secondary Outburst Elimination by CO2 Gas Fracturing in High Outburst Coal Seam
Study on Safety Tunneling Technology of Secondary Outburst Elimination by CO2 Gas Fracturing in High Outburst Coal Seam
The No. 3 coal seam in the Yuxi Coal Mine has a measured maximum gas content of 25.59 m3/t, along with a maximum gas pressure of 2.9 MPa, indicating its high risk to gas and outbur...
Experimental investigation on microstructure fractal characteristics of low-temperature oxidation of gas-bearing coal
Experimental investigation on microstructure fractal characteristics of low-temperature oxidation of gas-bearing coal
Abstract In order to study the multi-field coupling mechanism of gas and coal spontaneous combustion, low-temperature nitrogen adsorption and SEM were applied to carry out ...
Measurement and modeling of temperature evolution during methane desorption in coal
Measurement and modeling of temperature evolution during methane desorption in coal
AbstractThe decrease of coal temperature has been confirmed by many tests during methane desorption in coal, including coal and gas outburst, but the thermal-dynamic process for me...
Adaption of Theoretical Adsorption Model on Coal: Physical Structure
Adaption of Theoretical Adsorption Model on Coal: Physical Structure
With the motivation to investigate the role of coal physical structure on the adsorption performance of coal reservoir, 18 different types of coal samples with different coal struc...

Back to Top