Lateritic Ni–Co Prospectivity Modeling in Eastern Australia Using an Enhanced Generative Adversarial Network and Positive-Unlabeled Bagging

IF 4.8 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Nathan Wake, Ehsan Farahbakhsh, R. Dietmar Müller
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Abstract

The surging demand for Ni and Co, driven by the acceleration of clean energy transitions, has sparked interest in the Lachlan Orogen of New South Wales for its potential lateritic Ni–Co resources. Despite recent discoveries, a substantial knowledge gap exists in understanding the full scope of these critical metals in this geological province. This study employed a machine learning-based framework, integrating multidimensional datasets to create prospectivity maps for lateritic Ni–Co deposits within a specific Lachlan Orogen segment. The framework generated a variety of data-driven models incorporating geological (rock units, metamorphic facies), structural, and geophysical (magnetics, gravity, radiometrics, and remote sensing spectroscopy) data layers. These models ranged from comprehensive models that use all available data layers to fine-tuned models restricted to high-ranking features. Additionally, two hybrid (knowledge-data-driven) models distinguished between hypogene and supergene components of the lateritic Ni–Co mineral systems. The study implemented data augmentation methods and tackled imbalances in training samples using the SMOTE–GAN method, addressing common machine learning challenges with sparse training data. The study overcame difficulties in defining negative training samples by translating geological and geophysical data into training proxy layers and employing a positive and unlabeled bagging technique. The prospectivity maps revealed a robust spatial correlation between high probabilities and known mineral occurrences, projecting extensions from these sites and identifying potential greenfield areas for future exploration in the Lachlan Orogen. The high-accuracy models developed in this study utilizing the Random Forest classifier enhanced the understanding of mineralization processes and exploration potential in this promising region.

利用增强型生成式对抗网络和正向无标记袋装法建立澳大利亚东部红土镍钴矿远景模型
在清洁能源转型加速的推动下,对镍和钴的需求激增,这引发了人们对新南威尔士拉克兰造山带潜在红土镍钴资源的兴趣。尽管最近有了新的发现,但在了解该地质省这些关键金属的全部范围方面仍存在很大的知识差距。这项研究采用了一个基于机器学习的框架,整合了多维数据集,以绘制特定拉克兰造山带红土型镍钴矿床的远景图。该框架结合地质(岩石单元、变质面)、构造和地球物理(磁力、重力、辐射测量学和遥感光谱学)数据层生成了各种数据驱动模型。这些模型既有使用所有可用数据层的综合模型,也有仅限于高级特征的微调模型。此外,两个混合(知识数据驱动)模型区分了红土镍钴矿系统的下成因和上成因。该研究采用了数据增强方法,并利用 SMOTE-GAN 方法解决了训练样本的不平衡问题,从而解决了训练数据稀少的常见机器学习难题。该研究通过将地质和地球物理数据转化为训练代理层,并采用正向和非标记袋技术,克服了定义负向训练样本的困难。远景图显示了高概率与已知矿点之间的空间相关性,预测了这些矿点的延伸,并确定了拉克兰造山带未来勘探的潜在绿地区域。本研究利用随机森林分类器开发的高精度模型加深了人们对这一前景广阔地区的成矿过程和勘探潜力的了解。
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来源期刊
Natural Resources Research
Natural Resources Research Environmental Science-General Environmental Science
CiteScore
11.90
自引率
11.10%
发文量
151
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.
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