This paper illustrates an application of machine learning (ML) within a complex system that performs grade estimation. In surface mining, assay measurements taken from production drilling often provide useful information that allows initially inaccurate surfaces created using sparse exploration data to be revised and subsequently improved. Recently, a Bayesian warping technique has been proposed to reshape modeled surfaces using geochemical and spatial constraints imposed by newly acquired blasthole data. This paper focuses on incorporating machine learning into this warping framework to make the likelihood computation generalizable. The technique works by adjusting the position of vertices on the surface to maximize the integrity of modeled geological boundaries with respect to sparse geochemical observations. Its foundation is laid by a Bayesian derivation in which the geological domain likelihood given the chemistry, p(g|c), plays a similar role to p(y(c)|g). This observation allows a manually calibrated process centered around the latter to be automated since ML techniques may be used to estimate the former in a data-driven way. Machine learning performance is evaluated for gradient boosting, neural network, random forest and other classifiers in a binary and multi-class context using precision and recall rates. Once ML likelihood estimators are integrated in the surface warping framework, surface shaping performance is evaluated using unseen data by examining the categorical distribution of test samples located above and below the warped surface. Large-scale validation experiments are performed to assess the overall efficacy of ML assisted surface warping as a fully integrated component within an ore grade estimation system where the posterior mean is obtained via Gaussian Process inference with a Matern 3/2 kernel.
翻译:本文展示了机器学习(ML)在进行等级估测的复杂系统中的应用。在地表采矿中,从生产钻探中测量到的测量结果往往提供有用的信息,使得最初利用稀有勘探数据产生的表面不准确的表面能够进行修改并随后加以改进。最近,提出了一种贝叶斯扭曲技术,利用新获得的爆炸洞数据造成的地球化学和空间限制改造模型表层。本文侧重于将机器学习纳入这个扭曲框架,以便普遍计算的可能性。该技术工作通过调整表面的顶端位置,以最大限度地提高模型地质边界相对于稀疏的地质观测的完整性。其基础由贝叶斯派衍生出,其中地质领域的可能性与化学、p(g)c)和p(y(c) ⁇ g)的作用类似。这一观测使围绕后者的手工校准过程得以自动化,因为ML技术可能被用于以数据驱动的方式估算前者。 机械学习业绩被评估用于梯度提升、神经网络、随机森林和其他地质分解仪,其基础和多层地表层的地质域图域推断,在地面上进行精确和地平级的实地分析过程中,对地平地表的精确和地表分析框架进行了全面分析。