Identifying fluid pathways in hydrothermal deposits using hidden Markov models: Representation of fluid flow as exploration criteria

Juexuan Huang, Zhankun Liu, Hao Deng
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Abstract

Hydrothermal mineral systems are formed by the transport of metals from large source areas through convective fluid flow, subsequent leading to deposition of these metals at specific sites. The fluid pathways are crucial for connecting mineral sources with favorable zones of mineral deposition. However, due to the complexity of fluid flow and limitations in sampling cost, assay cost, and expert experience, inferring fluid pathways poses a significant challenge. In this paper, we leverage the continuous and extensive characteristics of exploration data to identify fluid pathways in hydrothermal deposits, uncovering the hidden patterns from their mineralization footprints and favorable structural features within the data. By modeling the fluid flow as a Markov process, we tailor a hidden Markov model (HMM) to identify fluid pathways using observations of mineralization and structural features. Specifically, we identify the latent geometry of fluid pathways by maximizing their posterior probability as represented by the HMM. We then represent the identified fluid pathways as two quantitative and mappable exploration criteria—trajectory length and pathway flux—which serve as predictor variables in 3D mineral prospectivity mapping. Our method is applied to the Xiadian orogenic gold deposit in the Jiaodong Peninsula, China. The results suggest that the formation of Xiadian deposit is attributed to a series of fluid trajectories originating from two injection points. By using the exploration criteria derived from the identified fluid pathways, we significantly enhance the accuracy and efficacy of mineral prospectivity mapping, demonstrating the proposed HMM as an effective artificial intelligence tool for mineral exploration targeting.
利用隐马尔可夫模型识别热液矿床中的流体路径:将流体流动表示为勘探标准
热液矿物系统是通过对流流体流动将金属从大矿源区输送到特定地点沉积而形成的。流体路径对于连接矿物源和矿物沉积的有利区域至关重要。然而,由于流体流动的复杂性,以及采样成本、化验成本和专家经验的限制,推断流体路径是一项重大挑战。在本文中,我们利用勘探数据的连续性和广泛性特征来识别热液矿床的流体路径,从数据中的矿化足迹和有利的结构特征揭示隐藏的模式。通过将流体流动建模为马尔可夫过程,我们定制了一个隐马尔可夫模型(HMM),利用对矿化和结构特征的观测来识别流体路径。具体来说,我们通过最大化 HMM 表示的流体路径后验概率来识别流体路径的潜在几何形状。然后,我们将识别出的流体通道表示为两个定量和可映射的勘探标准--轨迹长度和通道通量--这两个标准可作为三维矿产远景映射中的预测变量。我们的方法被应用于中国胶东半岛的夏甸成因金矿床。结果表明,夏甸矿床的形成归因于源于两个注入点的一系列流体轨迹。通过使用从识别的流体路径中得出的勘探标准,我们显著提高了矿产远景测绘的准确性和有效性,证明了所提出的 HMM 是矿产勘探目标定位的有效人工智能工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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