K-Means Clustering Approach to Determine Ore Type in Laterite Nickel Deposit

Wanni Wanni, E. Widodo
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Abstract

Nickel demand will increase as the electric vehicle production plan increases in the years ahead. Nickel matte is an important raw material in producing the producing electric cars. The precision and speed with which the kind of laterite nickel ore is determined based on the olivine concentration are critical because it affects energy requirements and nickel recovery. The present challenge is that it takes a long time to obtain the Loss on Ignition (LoI) number, which will be used to calculate the olivine concentration. As a result, an alternate approach for determining the type of ore without going through the phases of assessing the LoI value is required. The k-means clustering method examined data from one of the blocks in the PT Vale Indonesia Tbk mining region. The K-Means method is used to cluster data from 9 chemical elements. The olivine group that will be produced as a result of this analysis is characterized by three scenarios: the first one is the olivine group using two clusters according to the present split of olivine groups, namely high olivine and low olivine. The second scenario employs three clusters: high olivine, medium olivine, and low olivine. The third scenario uses four clusters based on the elbow method and silhouette guidelines. According to the findings, the best number of clusters was two clusters. The level of accuracy for 2 clusters, when compared with the conventional method, achieved 97.9% for cluster 1 and 85.0% for cluster 2.
红土型镍矿床矿石类型确定的k -均值聚类方法
随着未来几年电动汽车生产计划的增加,镍的需求将会增加。镍锍是生产电动汽车的重要原材料。根据橄榄石浓度确定红土镍矿类型的精度和速度至关重要,因为它影响能量需求和镍回收率。目前的挑战是需要很长时间才能获得用于计算橄榄石浓度的燃失量(LoI)。因此,需要一种替代方法来确定矿石的类型,而不需要经过评估LoI值的阶段。k-均值聚类方法检查了PT Vale印度尼西亚Tbk矿区一个区块的数据。使用K-Means方法对9种化学元素的数据进行聚类。这种分析结果将产生的橄榄石组有三种情况:第一种是橄榄石组,根据目前橄榄石组的划分,使用两簇橄榄石,即高橄榄石和低橄榄石。第二个场景使用三个集群:高橄榄石、中等橄榄石和低橄榄石。第三种场景使用基于肘部方法和轮廓指南的四个集群。根据研究结果,最佳簇数为两个簇。与传统方法相比,聚类1和聚类2的准确率分别达到97.9%和85.0%。
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