GWOKM:基于灰狼优化器和 K-均值聚类的新型地球化学异常检测混合优化算法

IF 2.6 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS Chemie Der Erde-Geochemistry Pub Date : 2023-10-05 DOI:10.1016/j.chemer.2023.126036
Mehrdad Daviran, Reza Ghezelbash, Abbas Maghsoudi
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引用次数: 0

摘要

由于地质构造的复杂性,利用溪流沉积物的区域地球化学数据识别有价值矿藏的地球化学特征是一项具有挑战性的任务。我们的团队目前正在研究无监督聚类分析(CA)以及与灰狼优化器(GWO)混合使用的潜力,以便利用溪流沉积物数据开发多元素地球化学模型。为了对地球化学数据进行聚类并发现任何不寻常的模式,我们选择使用 K-均值(KM)算法,因为该算法实施简单、计算速度快,而且能够处理大型数据集。尽管 KM 算法有很多优点,但它也有明显的局限性,比如聚类中心点的随机选择。这可能导致无监督地球化学建模的系统不确定性更高,计算时间更长。为了缓解这一问题,我们引入了一种新的混合方法,即所谓的 GWOKM 算法(Grey Wolf optimizer with K-means),以加强溪流沉积物地球化学数据中多元素模式的划分。该方法将灰狼优化算法与 KM 结合在一起,利用因子分析和样本集水盆地建模技术优化异常和背景的识别。伊朗克尔曼带 Baft 地区的斑岩和矽卡岩铜矿床异常多元素地球化学模式就是利用这种方法进行探测的。在对 KM 和 GWOKM 聚类方法得出的地球化学模型进行比较后发现,后者的预测率高于前者。这些结果肯定了无监督 KM 聚类分析(CA)作为分解地球化学异常-背景群体的一种手段的功效。此外,聚类方法与优化算法的整合被证明可以成功提高矿化区域的可信度,这在未来的勘探阶段可能会很有优势。根据研究结果,GWOKM 方法可以生成更可靠、更有效的地球化学异常目标。
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GWOKM: A novel hybrid optimization algorithm for geochemical anomaly detection based on Grey wolf optimizer and K-means clustering

Identifying the geochemical signatures of valuable mineral deposits using regional geochemical data from stream sediments is a challenging task due to the intricate characteristics of geological formations. Our team is currently investigating the potential of unsupervised clustering analysis (CA) and hybridization with the grey wolf optimizer (GWO) in developing multi-element geochemical models using stream sediment data. To cluster the geochemical data and uncover any unusual patterns, we opted to use the K-means (KM) algorithm due to its straightforward implementation, fast computation speed, and capacity to handle the large datasets. Despite its benefits, the KM method also has notable limitations, such as the random selection of cluster centroids. This can result in higher systematic uncertainty in unsupervised geochemical modeling and longer computation times. To mitigate this concern, we have introduced a new hybrid approach, grey wolf optimizer with K-means so-called the GWOKM algorithm to enhance the delineation of multi-elemental patterns in stream sediment geochemical data. This method incorporates the grey wolf optimization algorithm with KM to optimize the identification of both anomalies and backgrounds using factor analysis and sample catchment basin modeling techniques. This approach was utilized to detect anomalous multi-elemental geochemical patterns indicative of porphyry and skarn copper deposits in the Baft area, Kerman belt, Iran. Upon comparison of the geochemical models derived from KM and GWOKM clustering methods, the latter outperformed the former, as evidenced by its higher prediction rate. The outcomes affirm the efficacy of unsupervised KM clustering analysis (CA) as a means of breaking down geochemical anomaly-background populations. Moreover, the integration of clustering methods with optimization algorithms has proven to be successful for enhancing the credibility of mineralized areas, which could be advantageous in future exploration phases. Based on the results, the GWOKM approach generates more reliable and efficient geochemical anomaly targets.

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来源期刊
Chemie Der Erde-Geochemistry
Chemie Der Erde-Geochemistry 地学-地球化学与地球物理
CiteScore
7.10
自引率
0.00%
发文量
40
审稿时长
3.0 months
期刊介绍: GEOCHEMISTRY was founded as Chemie der Erde 1914 in Jena, and, hence, is one of the oldest journals for geochemistry-related topics. GEOCHEMISTRY (formerly Chemie der Erde / Geochemistry) publishes original research papers, short communications, reviews of selected topics, and high-class invited review articles addressed at broad geosciences audience. Publications dealing with interdisciplinary questions are particularly welcome. Young scientists are especially encouraged to submit their work. Contributions will be published exclusively in English. The journal, through very personalized consultation and its worldwide distribution, offers entry into the world of international scientific communication, and promotes interdisciplinary discussion on chemical problems in a broad spectrum of geosciences. The following topics are covered by the expertise of the members of the editorial board (see below): -cosmochemistry, meteoritics- igneous, metamorphic, and sedimentary petrology- volcanology- low & high temperature geochemistry- experimental - theoretical - field related studies- mineralogy - crystallography- environmental geosciences- archaeometry
期刊最新文献
Editorial Board Contrasting fluids and implications for ore genesis in the Jiawula-Chaganbulagen Porphyry Mo-epithermal PbZn metallogenetic system: Evidence from fluid inclusions and H-O-He-Ar isotopes Ediacaran anorogenic alkaline magmatism and wolframite mineralization linked to mantle plume activity in the north Arabian-Nubian Shield (Egypt) A hydrous sub-arc mantle domain within the northeastern Neo-Tethyan ophiolites: Insights from cumulate hornblendites Hydrothermal alteration of accessory minerals (allanite and titanite) in the late Archean Closepet granitoid (Dharwar Craton, India): A TEM study
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