Understanding the contribution of geophysical variables is vital for identifying the ore indicator regions. Both magnetometry and gamma-rays are used to identify the geophysical signatures of the rocks. Density is another key variable for tonnage estimation in mining and needs to be re-estimated in areas of change when a boundary update has been conducted. Modelling these geophysical variables in 3D will enable investigate the properties of the rocks and improve our understanding of the ore. Gaussian Process (GP) was previously used to generate 3D spatial models for grade estimation using geochemical assays. This study investigates the influence of the following two factors on the GP-based autonomously generated 3D geophysical models: the resolution of the input data and the number of nearest samples used in the training process. A case study was conducted on a typical Hammersley Ranges iron ore deposit using geophysical logs, including density, collected from the exploration holes.
翻译:了解地球物理变量的贡献对于确定矿石指标区域至关重要。磁度测量和伽马射线都用于确定岩石的地球物理特征。密度是采矿中吨位估计的另一个关键变量,在进行边界更新时需要重新估计变化地区。用3D模型模拟这些地球物理变量将有助于调查岩石的特性,增进我们对矿石的了解。Gaussian进程(GP)以前曾用来利用地球化学实验生成3D空间模型,用于进行等级评估。本研究调查以下两个因素对以GP为基础的自动生成的3D地球物理模型的影响:输入数据的解析以及培训过程中使用的最接近的样本数量。利用从勘探洞收集的包括密度在内的地球物理日志对典型的Hammsley山脉铁矿矿进行了案例研究。