{"title":"SsL-VGMM: A Semisupervised Machine Learning Model of Multisource Data Fusion for Lithology Prediction","authors":"Pengfei Lv, Weiying Chen, Hai Li, Wangting Song","doi":"10.1007/s11053-024-10375-9","DOIUrl":null,"url":null,"abstract":"<p>In deep mineral exploration, it is difficult to constrain the complex geological structures using a single geophysical method. To tackle the difficulty, integrated geophysical surveys and joint data interpretation are essential. Machine learning (ML) provides more accurate predictions than traditional methods, especially when dealing with complex data from multiple sources or varied statistical distributions. However, a major challenge in using ML for deep mineral exploration is the scarcity and imbalance of labeled samples, mainly due to budget constraints and the complexity of ore deposits. This issue reduces the accuracy of predictive models and introduces bias. Additionally, limited labeling can lead to difficulties in predicting previously undefined classes in training datasets. To address these challenges, we introduce a robust semisupervised ML framework that integrates diverse geophysical and geological datasets to improve model reliability with limited labeled data. Our approach uses a semisupervised ML variational Gaussian mixture model (SsL-VGMM) to handle issues related to insufficient and imbalanced data. We enhanced the model’s predictive capability for unseen data by introducing a novel penalty factor in the ‘cannot-link’ function. Moreover, we employed Bayesian optimization, focusing on the mean-mixture weight, to avoid local optima during model training. Our model demonstrated high accuracy and efficiency, with classification and prediction accuracies of 95.33% and 87.4%, respectively, in numerical and electromagnetic simulation scenarios. Its effectiveness was further validated by locating Pb–Zn–Ag deposits in Inner Mongolia, supported by actual drilling data. This paper highlights the model’s potential in complex mineral exploration and its significant practical and innovative value for deep mineral exploration.</p>","PeriodicalId":54284,"journal":{"name":"Natural Resources Research","volume":"38 1","pages":""},"PeriodicalIF":4.8000,"publicationDate":"2024-07-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Natural Resources Research","FirstCategoryId":"89","ListUrlMain":"https://doi.org/10.1007/s11053-024-10375-9","RegionNum":2,"RegionCategory":"地球科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"GEOSCIENCES, MULTIDISCIPLINARY","Score":null,"Total":0}
引用次数: 0
Abstract
In deep mineral exploration, it is difficult to constrain the complex geological structures using a single geophysical method. To tackle the difficulty, integrated geophysical surveys and joint data interpretation are essential. Machine learning (ML) provides more accurate predictions than traditional methods, especially when dealing with complex data from multiple sources or varied statistical distributions. However, a major challenge in using ML for deep mineral exploration is the scarcity and imbalance of labeled samples, mainly due to budget constraints and the complexity of ore deposits. This issue reduces the accuracy of predictive models and introduces bias. Additionally, limited labeling can lead to difficulties in predicting previously undefined classes in training datasets. To address these challenges, we introduce a robust semisupervised ML framework that integrates diverse geophysical and geological datasets to improve model reliability with limited labeled data. Our approach uses a semisupervised ML variational Gaussian mixture model (SsL-VGMM) to handle issues related to insufficient and imbalanced data. We enhanced the model’s predictive capability for unseen data by introducing a novel penalty factor in the ‘cannot-link’ function. Moreover, we employed Bayesian optimization, focusing on the mean-mixture weight, to avoid local optima during model training. Our model demonstrated high accuracy and efficiency, with classification and prediction accuracies of 95.33% and 87.4%, respectively, in numerical and electromagnetic simulation scenarios. Its effectiveness was further validated by locating Pb–Zn–Ag deposits in Inner Mongolia, supported by actual drilling data. This paper highlights the model’s potential in complex mineral exploration and its significant practical and innovative value for deep mineral exploration.
在深部矿产勘探中,使用单一地球物理方法很难确定复杂的地质结构。要解决这一难题,必须进行综合地球物理勘测和联合数据解释。与传统方法相比,机器学习(ML)能提供更准确的预测,尤其是在处理来自多个来源或不同统计分布的复杂数据时。然而,将 ML 用于深部矿产勘探的一个主要挑战是标记样本的稀缺性和不平衡性,这主要是由于预算限制和矿床的复杂性造成的。这一问题会降低预测模型的准确性,并带来偏差。此外,有限的标注会导致难以预测训练数据集中以前未定义的类别。为了应对这些挑战,我们引入了一个稳健的半监督 ML 框架,该框架整合了各种地球物理和地质数据集,以提高有限标记数据模型的可靠性。我们的方法使用半监督 ML 变异高斯混合模型(SsL-VGMM)来处理与数据不足和不平衡相关的问题。我们在 "不能链接 "函数中引入了一个新的惩罚因子,从而增强了模型对未知数据的预测能力。此外,我们还采用了贝叶斯优化方法,重点关注平均混合权重,以避免在模型训练过程中出现局部最优。我们的模型具有很高的准确性和效率,在数值模拟和电磁模拟场景中,分类准确率和预测准确率分别达到 95.33% 和 87.4%。在实际钻探数据的支持下,通过对内蒙古铅锌银矿床的定位,进一步验证了该模型的有效性。本文强调了该模型在复杂矿产勘探中的潜力及其在深部矿产勘探中的重要实用价值和创新价值。
期刊介绍:
This journal publishes quantitative studies of natural (mainly but not limited to mineral) resources exploration, evaluation and exploitation, including environmental and risk-related aspects. Typical articles use geoscientific data or analyses to assess, test, or compare resource-related aspects. NRR covers a wide variety of resources including minerals, coal, hydrocarbon, geothermal, water, and vegetation. Case studies are welcome.