-
Title
Hazard Prediction and Management of Roof Caving in Coal Mining Faces Based on ELM-CBR
-
作者
刘璐季嘉琪苗德俊
-
Author
Liu Lu;Ji Jiaqi;Miao Dejun
-
单位
山东科技大学安全与环境工程学院
-
Organization
School of Safety and Environmental Engineering
-
摘要
为准确预测顶板冒落危险性等级,有针对性地进行风险管理,通过极限学习机(ELM)和案例推理(CBR)两种方法,提出相应的预测与管理方法,并将该方法得到的结果与实际情况进行对比分析。结果表明,该方法达到了较高的准确率,对预测结果进一步管理,为管理者提供决策依据。
-
Abstract
To accurately predict the hazard level of roof caving and carry out targeted risk management, corresponding prediction and management methods are proposed through two methods: extreme learning machine (ELM) and case based reasoning (CBR), and the results obtained by this method are compared and analyzed with the actual situation. The results show that this method achieves high accuracy, further manages the prediction results, and provides decision-making basis for managers.
-
关键词
极限学习机顶板冒落案例推理危险性预测
-
KeyWords
extreme learning machine; roof caving; case based reasoning; hazard prediction
-
DOI
-
相关文章