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Mineral Potential Mapping Using a Conjugate Gradient Logistic Regression Model

机译:使用共轭梯度逻辑回归模型的矿物潜力映射

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Mineral potential prediction is a process of establishing a statistical model that describes the relationship between evidence variables and mineral occurrences. In this study, evidence variables were constructed from geological, remote sensing, and geochemical data collected from the Lalingzaohuo district, Qinghai Province, China. Based on these evidence variables, a conjugate gradient logistic regression (CG-LR) model was established to predict exploration targets in the study area. The receiver operating characteristic (ROC) and prediction-area (P-A) curves were used to evaluate the effectiveness of the CG-LR model in mineral potential mapping. The difference between the vertical and horizontal coordinates of each point on the ROC curve was used to determine the optimal threshold for classifying the exploration targets. The optimal threshold corresponds to the point on the ROC curve where the difference between the vertical coordinate and the horizontal coordinate is the largest. In exploration target prediction in the study area, the CG algorithm was used to optimize iteratively the LR coefficients, and the prediction effectiveness was tested for different epochs. With increasing iterations, the prediction performance of the model becomes increasingly better. After 60 iterations, the LR model becomes stable and has the best performance in exploration target prediction. At this point, the exploration targets predicted by the CG-LR model occupy 14.39% of the study area and contain 93% of the known mineral deposits. The exploration targets predicted by the model are consistent with the metallogenic geological characteristics of the study area. Therefore, the CG-LR model can effectively integrate geological, remote sensing, and geochemical data for the study area to predict targets for mineral exploration.
机译:矿物势预测是建立统计模型的过程,该模型描述了证据变量与矿物发生之间的关系。在本研究中,证据变量由来自中国青海省洛林昭霍区收集的地质,遥感和地球化学数据构建。基于这些证据变量,建立了共轭梯度逻辑回归(CG-LR)模型,以预测研究区域的勘探目标。接收器操作特性(ROC)和预测区域(P-A)曲线用于评估CG-LR模型在矿物电位映射中的有效性。 ROC曲线上每个点的垂直和水平坐标之间的差异用于确定用于对勘探目标进行分类的最佳阈值。最佳阈值对应于ROC曲线上的点,其中垂直坐标与水平坐标之间的差是最大的。在研究区域的探索目标预测中,CG算法用于迭代地优化LR系数,并且对不同的时期测试预测效果。随着迭代的增加,模型的预测性能变得越来越好。在60次迭代之后,LR模型变得稳定,并且具有勘探目标预测的最佳性能。此时,CG-LR模型预测的勘探目标占研究区域的14.39%,含有93%的已知矿物沉积物。模型预测的勘探靶标与研究区域的成矿地质特征一致。因此,CG-LR模型可以有效地整合地质,遥感和地球化学数据,以预测矿物勘探的目标。

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