Recognition of multivariate geochemical anomalies using a geologically-constrained variational autoencoder network with spectrum separable module – A case study in Shangluo District, China

IF 3.1 3区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Bo Zhao , Dehui Zhang , Panpan Tang , Xiaoyan Luo , Haoming Wan , Lin An
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引用次数: 0

Abstract

This study has developed a novel variational autoencoder architecture by incorporating the spectrum separable module, termed SSM-VAE, so as to recognize the multi-mineral-species geochemical patterns over the Shangluo district, central China, and then facilitate a better understanding of the regional metallogenesis. The primary advantage of SSM-VAE is its ability to explore the interlayer correlations and then integrate them into the reconstructed features, which greatly improved the geological interpretability of the model products. In the training process, a hybrid loss function with a geologically-constrained term derived from the fractal analysis was designed to guide the model to focus on anomalies related to mineralization. Afterward, the factor analysis together with the EM-MML thresholding algorithm were integrated as a post-processing tool. Finally, the mineral-spot identification rate (δ) versus the size of the anomalous area (S) are used to validate the ore-bearing potential of different anomaly divisions. Comparing to other state-of-the-art models without regard to the interlayer correlations, SSM-VAE can produce well-zoned, mineral species-specific, and more metalliferous anomalous patches. To be specific, we separated out 10 zoned anomaly divisions, and on average, when S = 1% there are 8.5013 mineral spots falling within.

利用带频谱分离模块的地质约束变分自动编码网络识别多变量地球化学异常——以商洛区为例
为了识别商洛地区多矿种地球化学模式,从而更好地理解区域成矿作用,本文提出了一种新的变分自编码器体系结构,即SSM-VAE光谱可分模块。SSM-VAE的主要优点是能够探索层间相关性,然后将其整合到重建的特征中,从而大大提高了模型产品的地质可解释性。在训练过程中,设计了一个由分形分析导出的带有地质约束项的混合损失函数,以指导模型关注与矿化相关的异常。然后,将因子分析与EM-MML阈值分割算法结合作为后处理工具。最后,利用矿点识别率δ与异常区大小S对比,对不同异常分区的含矿潜力进行了验证。与其他不考虑层间相关性的最先进的模型相比,SSM-VAE可以产生分区良好的矿物物种特异性和更多含金属的异常斑块。具体来说,我们分离出了10个分带异常分区,当S = 1%时,平均有8.5013个矿点落在其中。
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来源期刊
Applied Geochemistry
Applied Geochemistry 地学-地球化学与地球物理
CiteScore
6.10
自引率
8.80%
发文量
272
审稿时长
65 days
期刊介绍: Applied Geochemistry is an international journal devoted to publication of original research papers, rapid research communications and selected review papers in geochemistry and urban geochemistry which have some practical application to an aspect of human endeavour, such as the preservation of the environment, health, waste disposal and the search for resources. Papers on applications of inorganic, organic and isotope geochemistry and geochemical processes are therefore welcome provided they meet the main criterion. Spatial and temporal monitoring case studies are only of interest to our international readership if they present new ideas of broad application. Topics covered include: (1) Environmental geochemistry (including natural and anthropogenic aspects, and protection and remediation strategies); (2) Hydrogeochemistry (surface and groundwater); (3) Medical (urban) geochemistry; (4) The search for energy resources (in particular unconventional oil and gas or emerging metal resources); (5) Energy exploitation (in particular geothermal energy and CCS); (6) Upgrading of energy and mineral resources where there is a direct geochemical application; and (7) Waste disposal, including nuclear waste disposal.
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