优化微地震监测:高斯-考奇策略与自适应权重策略的融合

IF 4.8 2区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Wei Zhu, Zhihui Li, Hang Su, Lei Liu, Ali Asgher Heidari, Huiling Chen, Guoxi Liang
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引用次数: 0

摘要

在矿产资源开采中,实时监测岩体的稳定性,合理调控地压集中区域,保障人员和设备的安全至关重要。监测岩体破裂产生的微震信号可以有效预测岩体灾害,但目前的微震监测技术并不理想。为了解决深井微震监测问题,本研究提出了一种基于机器学习的微震现象预测模型。首先,本研究提出了随机备用、双自适应权重和高斯-考奇融合策略,作为多逆优化器(MVO)的补充,并提出了一种增强型 MVO 算法(RDGMVO)。随后,通过将 RDGMVO 与模糊 K 近邻(FKNN)分类器相结合,提出了 RDGMVO-FKNN 微震预测模型。实验部分将十二种传统算法和最新增强算法与 RDGMVO 进行了比较,证明后者具有出色的基准优化性能和显著的改进效果。接下来,FKNN 对比实验、经典分类器实验和微震数据集特征选择实验证实了 RDGMVO-FKNN 模型在微震预测问题上的精确性和稳定性。结果表明,RDGMVO-FKNN 模型的准确率高于 89%,表明它是一种可靠、准确的微地震发生分类和预测方法。代码已在 https://github.com/GuaipiXiao/RDGMVO 上发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Microseismic Monitoring: A Fusion of Gaussian-Cauchy and Adaptive Weight Strategies
In mining mineral resources, it is vital to monitor the stability of the rock body in real time, reasonably regulate the area of ground pressure concentration, and guarantee the safety of personnel and equipment. The microseismic signals generated by monitoring the rupture of the rock body can effectively predict the rock body disaster, but the current microseismic monitoring technology is not ideal. In order to address the issue of microseismic monitoring in deep wells, this research suggests a machine learning-based model for predicting microseismic phenomena. First, this work presents the random spare, double adaptive weight, and Gaussian-Cauchy fusion strategies as additions to the multi-verse optimizer (MVO) and suggests an enhanced MVO algorithm (RDGMVO). Subsequently, the RDGMVO-FKNN microseismic prediction model is presented by combining it with the Fuzzy K-Nearest Neighbours (FKNN) classifier. The experimental section compares twelve traditional and recently enhanced algorithms with RDGMVO, demonstrating the latter's excellent benchmark optimization performance and remarkable improvement effect. Next, the FKNN comparison experiment, the classical classifier experiment, and the microseismic dataset feature selection experiment confirm the precision and stability of the RDGMVO-FKNN model for the microseismic prediction problem. According to the results, the RDGMVO-FKNN model has an accuracy above 89%, indicating that it is a reliable and accurate method for classifying and predicting microseismic occurrences. Code has been available at https://github.com/GuaipiXiao/RDGMVO.
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来源期刊
Journal of Computational Design and Engineering
Journal of Computational Design and Engineering Computer Science-Human-Computer Interaction
CiteScore
7.70
自引率
20.40%
发文量
125
期刊介绍: Journal of Computational Design and Engineering is an international journal that aims to provide academia and industry with a venue for rapid publication of research papers reporting innovative computational methods and applications to achieve a major breakthrough, practical improvements, and bold new research directions within a wide range of design and engineering: • Theory and its progress in computational advancement for design and engineering • Development of computational framework to support large scale design and engineering • Interaction issues among human, designed artifacts, and systems • Knowledge-intensive technologies for intelligent and sustainable systems • Emerging technology and convergence of technology fields presented with convincing design examples • Educational issues for academia, practitioners, and future generation • Proposal on new research directions as well as survey and retrospectives on mature field.
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