印度西部Aravalli省贱金属矿床潜力预测填图的扩展证据权重模型

A. Porwal, E. Carranza, M. Hale
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引用次数: 66

摘要

基于证据权重的矿产潜力制图方法通常使用二元图,而现实世界的地理空间数据本质上大多是多类的。随后将多类地图重新分类为二进制地图是一种简化,可能会导致信息丢失。本文描述了在扩展证据权模型中使用多类证据图的结果与在简单证据权模型中使用二元证据图的结果的对比。研究区位于印度西部Aravalli省中南部,在元古界表壳岩中赋存大量sedex型贱金属矿床。贱金属矿床的识别标准分为多类证据图和二元证据图。将已知矿床划分为两个子集,即训练子集和验证子集。训练子集用于计算证据图的权重、对比和后验概率及其方差。根据后验概率估计的贱金属矿床的预期频率分布与观测到的频率分布使用标准拟合优度检验进行比较,以验证输入证据图的条件独立性。对两种模型的后验概率进行了映射和解释,将研究区域划分为贱金属矿床有利、有利和不有利的区域。与简单证据权模型相比,扩展证据权模型在有利区和允许区具有更强的鲁棒性和精细的后验概率,并且具有更好的预测率。结果还表明,在证据权建模中使用多类证据图,证据权、对比和后验概率的统计性质没有明显退化。
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Extended Weights-of-Evidence Modelling for Predictive Mapping of Base Metal Deposit Potential in Aravalli Province, Western India
Approaches to mineral potential mapping based on weights of evidence generally use binary maps, whereas, real-world geospatial data are mostly multi-class in nature. The consequent reclassification of multi-class maps into binary maps is a simplification that might result in a loss of information. This paper describes results of using multi-class evidential maps in an extended weights-of-evidence model vis-a-vis results of using binary evidential maps in a simple-weights-of-evidence model. The study area in the south-central part of Aravalli province (western India) hosts a number of SEDEX-type base metal deposits in Proterozoic supracrustal rocks. Recognition criteria for base metal deposits were represented as both multi-class and binary evidential maps. The known mineral deposits were divided into two subsets, viz., the training and the validation subsets. The training subset was used to calculate, for the evidential maps, the weights, contrasts, and posterior probabilities and their variances. The distributions of expected frequencies of base metal deposits estimated from the posterior probabilities and the observed frequencies were compared using standard goodness-of-fit tests to verify conditional independence of the input evidential maps. The posterior probabilities from both the models were mapped and interpreted to classify the study area into zones favorable, permissive, and non-permissive for base metal deposit occurrence. As compared to the simple weights-of-evidence model, the extended weights-of-evidence model results in more robust and finely differentiated posterior probabilities in favorable and permissive zones and has a better prediction rate. The results also reveal that the statistical properties of the weights of evidence, the contrasts, and the posterior probabilities are not significantly degenerated by using multi-class evidential maps in weights-of-evidence modelling.
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