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Application of Self-Organizing Map for Exploration of REEs’ Deposition

机译:自组织图在稀土元素沉积勘探中的应用

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Varieties of approaches and algorithms have been presented to identify the distribution of elements. Previous researches based on the type of problem, categorized their data in proper clusters or classes. This means that the process of solution could be supervised or unsupervised. In cases, where there is no idea about dependency of samples to specific groups, clustering methods (unsupervised) are applied. About geochemistry data, since various elements are involved, in addition to the complex nature of geochemical data, clustering algorithms would be useful for recognition of elements distribution. In this paper, Self-Organizing Map (SOM) algorithm, as an unsupervised method, is applied for clustering samples based on REEs contents. For this reason the Choghart Fe-REE deposit (Bafq district, central Iran), was selected as study area and dataset was a collection of 112 lithology samples that were assayed with laboratory tests such as ICP-MS and XRF analysis. In this study, input vectors include 19 features which are coordinates x, y, z and concentrations of REEs as well as the concentration of Phosphate (P2O5) since the apatite is the main source of REEs in this particular research. Four clusters were determined as an optimal number of clusters using silhouette criterion as well as k-means clustering method and SOM. Therefore, using self-organizing map, study area was subdivided in four zones. These four zones can be described as phosphate type, albitofyre type, metasomatic and phosphorus iron ore, and Iron Ore type. Phosphate type is the most prone to rare earth elements. Eventually, results were validated with laboratory analysis.
机译:已经提出了各种方法和算法来识别元素的分布。先前基于问题类型的研究将其数据分类为适当的类或类。这意味着解决方案的过程可以受到监督,也可以不受监督。如果不了解样本对特定组的依赖性,则使用聚类方法(无监督)。关于地球化学数据,由于涉及各种元素,因此除了地球化学数据的复杂性外,聚类算法对于识别元素分布也很有用。本文采用自组织映射(SOM)算法作为一种无监督的方法,基于REEs的内容对样本进行聚类。因此,选择了Choghart Fe-REE矿床(伊朗中部Bafq区)作为研究区域,数据集是112种岩性样品的集合,这些样品通过实验室测试如ICP-MS和XRF分析进行了分析。在这项研究中,输入载体包括19个特征,分别是x,y,z坐标和REE浓度以及磷酸盐(P2O5)浓度,因为磷灰石是这项特定研究中REE的主要来源。使用轮廓标准以及k-均值聚类方法和SOM将四个聚类确定为最佳聚类数。因此,使用自组织图将研究区域划分为四个区域。这四个区域可以描述为磷酸盐型,亚铁矿石型,交代和磷铁矿以及铁矿石型。磷酸盐类型是最容易产生稀土元素的元素。最终,通过实验室分析验证了结果。

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