Evaluation of Rockburst Potential in Kimberlite Using Fruit Fly Optimization Algorithm and Generalized Regression Neural Networks

IF 1.2 4区 工程技术 Q3 MINING & MINERAL PROCESSING Archives of Mining Sciences Pub Date : 2023-07-20 DOI:10.24425/AMS.2019.128683
Yuanyuan Pu, D. Apel, Y. Pourrahimian, Jie-Chao Chen
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引用次数: 5

Abstract

Rockburst is a common engineering geological hazard. In order to evaluate rockburst liability in kimberlite at an underground diamond mine, a method combining generalized regression neural networks (GRNN) and fruit fly optimization algorithm (FOA) is employed. Based on two fundamental premises of rockburst occurrence, depth, σθ, σc, σt, B1, B2, SCF, Wet are determined as indicators of rockburst, which are also input vectors of GRNN model. 132 groups of data obtained from rockburst cases from all over the world are chosen as training samples to train the GRNN model; FOA is used to seek the optimal parameter σ that generates the most accurate GRNN model. The trained GRNN model is adopted to evaluate burst liability in kimberlite pipes. The same eight rockburst indicators are acquired from lab tests, mine site and FEM model as test sample features. Evaluation results made by GRNN can be confirmed by a rockburst case at this mine. GRNN do not require any prior knowledge about the nature of the relationship between the input and output variables and avoid analyzing the mechanism of rockburst, which has a bright prospect for engineering rockburst potential evaluation.
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利用果蝇优化算法和广义回归神经网络评价金伯利岩岩爆潜力
岩爆是一种常见的工程地质灾害。采用广义回归神经网络(GRNN)和果蝇优化算法(FOA)相结合的方法,对某地下钻石矿金伯利岩岩的岩爆危险性进行了评价。基于岩爆发生的两个基本前提,确定深度σθ、σc、σt、B1、B2、SCF和Wet作为岩爆指标,这也是GRNN模型的输入向量。选取来自世界各地的132组岩爆案例数据作为训练样本,对GRNN模型进行训练;FOA用于寻找生成最准确GRNN模型的最优参数σ。采用经过训练的GRNN模型来评估金伯利岩管道的爆裂倾向。从室内试验、矿场和有限元模型中获得了相同的8个岩爆指标作为试样特征。GRNN的评价结果可以通过该矿的岩爆实例得到证实。GRNN不需要任何关于输入和输出变量之间关系性质的先验知识,也避免了对岩爆机理的分析,这在工程岩爆潜力评估方面具有广阔的前景。
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来源期刊
Archives of Mining Sciences
Archives of Mining Sciences 工程技术-矿业与矿物加工
CiteScore
2.40
自引率
16.70%
发文量
0
审稿时长
20 months
期刊介绍: Archives of Mining Sciences (AMS) is concerned with original research, new developments and case studies in mining sciences and energy, civil engineering and environmental engineering. The journal provides an international forum for the publication of high quality research results in: mining technologies, mineral processing, stability of mine workings, mining machine science, ventilation systems, rock mechanics, termodynamics, underground storage of oil and gas, mining and engineering geology, geotechnical engineering, tunnelling, design and construction of tunnels, design and construction on mining areas, mining geodesy, environmental protection in mining, revitalisation of postindustrial areas. Papers are welcomed on all relevant topics and especially on theoretical developments, analytical methods, numerical methods, rock testing, site investigation, and case studies.
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