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A Gaussian process machine learning model for cemented rockfill strength prediction at a diamond mine

机译:钻石矿井水泥堆石力预测的高斯工艺机学习模型

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As a main strategy of backfilling in mining operations, cemented rockfill (CRF) is extensively used because of its high strength and mine waste disposal convenience. The CRF strength has a direct bearing on ground support performance in backfill mining, which necessitates investigating CRF strength determination. This study employed a Gaussian process (GP) machine learning model to reflect the relationship between CRF compressive strength and material components as well as curing age. More than one thousand data from a public database were used to train the GP model with an automatic hyperparameter optimization. A series of laboratory tests prepared eight test samples for our predicting as well as the true values for model validation. The GP model achieved a predicting accuracy with the r(2) value 0.90 and the MSE value 7.78 based on CRF true values we obtained in the laboratory. In addition, seven test samples' true values resided inside the 95% confidence interval of the GP prediction. We also constructed three other machine learning models to conduct the same work as the GP model did. The results showed that the GP model performed the best of four models, which demonstrated that the GP model was effective and robust in dealing with time series predicting task.
机译:作为在采矿业务的回填的主要策略,由于其高强度和矿井废物处理方便,所以巩固的堆石(CRF)被广泛使用。 CRF强度在回填采矿中具有直接轴承的地面支持性能,这需要研究CRF强度测定。本研究采用高斯过程(GP)机器学习模型,以反映CRF压缩强度和材料部件之间的关系以及固化时期。来自公共数据库的超过一千个数据用于培训GP模型,具有自动的HyperParameter优化。一系列实验室测试为我们的预测和模型验证的真实值进行了八个测试样本。 GP模型基于在实验室中获得的CRF真实值,实现了与R(2)值0.90和MSE值7.78的预测精度。此外,七个测试样本的真实值仍在GP预测的95%置信区间内。我们还构建了另外三种机器学习模型,以便在GP模型中进行相同的工作。结果表明,GP模型的表现为四种模型中最好的,这表明GP模型在处理时间序列预测任务方面是有效和稳健的。

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