钻探资料知识发现预测潜在金矿

G. Saptawati, Gusti Ngurah Mega Nata
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引用次数: 7

摘要

钻井是矿产勘查行业中最重要、风险最大、成本最高的活动之一。然而,在确定钻井目标时,地质学家仍然使用定性判断。因此,钻井中的故障数量变得非常高。钻井目标的预测对于最大限度地降低失效风险和减少寻找新钻井区域的机会损失至关重要。钻井数据包括地球化学数据、地球物理数据和地质数据。根据岩浆-热液理论,结合物探和地球化学资料,建立预测模型,预测潜在的地下金。同时,利用地质资料可以确定金矿随岩性和蚀变的存在趋势。当确定用于支持矿物潜力预测的数据挖掘技术时,问题就出现了,如何表示采矿过程的钻井数据。本研究重点分析了从钻井数据中挖掘知识的数据挖掘技术,以及钻井数据在挖掘过程中的表示。从分析结果来看,数据分类和频繁项集挖掘能够支持钻井目标的预测。两个区域的钻探试验结果表明,对钻探数据进行分类可以预测新钻探目标的潜力。此外,频繁模式法还可以结合岩性、蚀变等特征,对金矿的赋存模式进行勘查。数据挖掘的结果可以帮助矿产勘查行业预测金的地下潜力。目标是将钻井失败的风险降至最低,并支持业界定量确定新的钻井目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge discovery on drilling data to predict potential gold deposit
Drilling is one of activities in mineral exploration Industry which is very important, risky and the most expensive. However, geologist are still using qualitative judgments in determining drilling targets. As a result, the number of failures in drilling become very high. Prediction of drilling target is important to minimize the risk of failure and minimize the loss of opportunities to find a new drilling area. Drilling data consists of geochemical data, geophysical data and geological data. Based on the theory of magmatic-hydrothermal, geophysical data and geochemical data, it is possible to build predictive models to predict potential subsurface Au. Meanwhile, geological data can be used to determine the tendency of gold presence along with lithology and alteration. The problem arises when determining data mining techniques to be used to support the prediction of mineral potential, how to represent drilling data for the mining process. This research focused on the analysis of data mining techniques to mine the knowledge from drilling data, and also the drilling data representation for the mining process. From the analysis result, the classification of data and frequent itemsets mining is capable to support the prediction of drilling targets. The test results using two areas of exploration drilling show that classification on drilling data can be used to predict the potential for new drilling target. Moreover, frequent pattern mining can be used to mine the occurrence pattern of Au together with lithology and alteration. Both the results of data mining can help mineral exploration industries in predicting the Au subsurface potential. The goal is to minimize the risk of failure of drilling and support the industry's decision to be quantitatively decide a new drilling target.
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