人工神经网络
屋顶
输送带
煤矿开采
工程类
消防
校准
毒物控制
模拟
计算机科学
海洋工程
人工智能
结构工程
煤
机械工程
数学
统计
环境卫生
有机化学
化学
废物管理
医学
作者
Manuel Julián Barros-Daza,Kray Luxbacher,Brian Y. Lattimer,Jonathan L. Hodges
标识
DOI:10.1177/07349041211056343
摘要
This article presents a conveyor belt fire classification model that allows for the determination of the most effective firefighting strategy. In addition, the effect of belt design parameters on the fire classification was determined. A methodology that involves the use of numerical simulations and artificial neural networks was implemented. An approach previously proposed for modeling fires over conveyor belts was used. With the objective of obtaining some required modeling input parameter and verifying the capacity of this approach to get realistic results, computational fluid dynamics model calibration and validation were carried out using experimental test results available in the literature. Results indicated that scenarios with belt positions closer to the mine roof and greater tunnel heights require a higher longitudinal air velocity to be attacked directly. Furthermore, the belt fire classification model provided by the artificial neural network had an accuracy around 95% when test scenarios were classified.
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