Litcius/Paper detail

Optimization of the Process Parameters of Fully Mechanized Top-Coal Caving in Thick-Seam Coal Using BP Neural Networks

Minfu Liang, Cheng‐Jun Hu, Rui Yu, Lixin Wang, Baofu Zhao, Ziyue Xu

2022Sustainability19 citationsDOIOpen Access PDF

Abstract

The method of fully mechanized top-coal caving mining has become the main method of mining thick-seam coal. The process parameters of fully mechanized caving will affect the recovery rate and gangue content of top coal. Through numerical simulation software, the top-coal recovery rate and gangue content, under different fully mechanized caving process parameters, were simulated, and the influence law of different fully mechanized caving process parameters on top-coal recovery rate and gangue content was obtained. A decision model for top-coal caving process parameters was established with a BP neural network, and the optimal top-coal caving parameters were obtained for the actual situation of a working face. On this basis, a in-lab similarity simulation test of the particle material was carried out. The results show that the top-coal recovery rate and gangue content were 86.56% and 3.45%, respectively, and the coal caving effect was good. A BP neural network was used to study the decisions optimizing fully mechanized caving process parameters, which effectively improved the decision-making efficiency thereabout and provided a basis for realizing intelligent, fully mechanized caving mining.

Topics & Concepts

CoalGangueCoal miningRecovery rateProcess (computing)EngineeringMining engineeringArtificial neural networkPetroleum engineeringComputer scienceWaste managementArtificial intelligenceMaterials scienceMetallurgyChemistryOperating systemChromatographyGeomechanics and Mining EngineeringGeoscience and Mining TechnologyBelt Conveyor Systems Engineering
Optimization of the Process Parameters of Fully Mechanized Top-Coal Caving in Thick-Seam Coal Using BP Neural Networks | Litcius