Assimilation of the chronology of mineral system components in prospectivity analysis procedure for mineral exploration targeting: Adaptation of recurrent neural networks

IF 3.4 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Soran Qaderi , Abbas Maghsoudi , Mahyar Yousefi , Amin Beiranvand Pour
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Abstract

Ore deposits are the end product of a series of complex geological processes that operate over time and scales. Given the importance of the time- and scale-dependent processes, this study aims to develop a mineral prospectivity modeling method through contribution of the chronology of ore deposition processes. To achieve this goal, three different architectures of recurrent neural networks (RNNs), i.e., simpleRNN (SRNN), long short-term memory (LSTM), and gated recurrent unit (GRU), were examined to integrate layers of mineral system-based exploration criteria for prospectivity mapping. To compare the time sequence-based prospectivity modeling method (TMPM), which was generated using RNNs, with existing MPM approaches that don't consider the sequence of the ore-forming geological events in the modeling procedure, we generated two prospectivity models using convolutional neural network (CNN) and a classical fuzzy gamma operator. The results obtained demonstrated excellent performance of the three RNN methods over the CNN and fuzzy approaches. To illustrate and demonstrate the method proposed we used a data set of Mississippi Valley-type (MVT) PbZn mineralization in the west of Semnan province, Iran.
矿产找矿目标远景分析过程中矿物系统组分年表的同化:递归神经网络的自适应
矿床是一系列复杂地质过程的最终产物,这些地质过程随时间和规模而发生作用。考虑到时间和尺度相关过程的重要性,本研究旨在通过矿床沉积过程年代学的贡献,开发一种矿产远景建模方法。为了实现这一目标,研究人员研究了三种不同的递归神经网络(rnn)架构,即simpleRNN (SRNN)、长短期记忆(LSTM)和门控递归单元(GRU),以整合基于矿物系统的勘探标准层,以进行远景制图。为了将rnn生成的基于时间序列的前瞻性建模方法(TMPM)与现有的不考虑成矿地质事件序列的前瞻性建模方法(TMPM)进行比较,利用卷积神经网络(CNN)和经典模糊伽玛算子生成了两种前瞻性模型。实验结果表明,这三种RNN方法都比CNN和模糊方法具有更好的性能。为了说明和证明所提出的方法,我们使用了伊朗Semnan省西部密西西比河谷型(MVT)铅锌成矿的数据集。
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来源期刊
Journal of Geochemical Exploration
Journal of Geochemical Exploration 地学-地球化学与地球物理
CiteScore
7.40
自引率
7.70%
发文量
148
审稿时长
8.1 months
期刊介绍: Journal of Geochemical Exploration is mostly dedicated to publication of original studies in exploration and environmental geochemistry and related topics. Contributions considered of prevalent interest for the journal include researches based on the application of innovative methods to: define the genesis and the evolution of mineral deposits including transfer of elements in large-scale mineralized areas. analyze complex systems at the boundaries between bio-geochemistry, metal transport and mineral accumulation. evaluate effects of historical mining activities on the surface environment. trace pollutant sources and define their fate and transport models in the near-surface and surface environments involving solid, fluid and aerial matrices. assess and quantify natural and technogenic radioactivity in the environment. determine geochemical anomalies and set baseline reference values using compositional data analysis, multivariate statistics and geo-spatial analysis. assess the impacts of anthropogenic contamination on ecosystems and human health at local and regional scale to prioritize and classify risks through deterministic and stochastic approaches. Papers dedicated to the presentation of newly developed methods in analytical geochemistry to be applied in the field or in laboratory are also within the topics of interest for the journal.
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