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An Adaptive Data Driven Model for Characterizing Rock Properties from Drilling Data

机译:一种自适应数据驱动模型,用于钻取数据的岩石属性

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Autonomous operation of blast hole drill rigs requires monitoring of drilling parameters known as "Measurement While Drilling" (MWD) data. From these data, rock properties can be inferred. A supervised classification scheme is usually used to map MWD data inputs to rock type outputs given some labeled training data. However, the geology has no definite ground truth that can allow a reliable labeling of the training data, nor is there a clear input-output pair connection between the MWD data and the rock types. In this paper, an adaptive unsupervised approach is proposed to estimate the rock types in a data driven way by minimizing the entropy gradient of the characterizing measure - "Optimized Adjusted Penetration Rate" (OAPR). Neither data labeling nor fixed model parameters are required because of the data driven nature of the algorithm. Experimental results illustrate the effectiveness of our solution.
机译:爆破孔钻机的自主操作需要监控称为“钻井”(MWD)数据的“测量”的钻孔参数。从这些数据,可以推断出岩石属性。监督分类方案通常用于将MWD数据输入映射到岩石类型输出给定某些标记的培训数据。但是,地质没有明确的基本真理,可以允许对训练数据的可靠标签,也没有在MWD数据和岩石类型之间有明确的输入输出对连接。本文通过最小化特征测量的熵梯度 - “优化调整的渗透率”(OAPR),提出了一种自适应无监督方式来估计数据驱动方式中的岩石类型。由于算法的数据驱动性质,所需的数据标签和固定模型参数都不需要。实验结果说明了我们解决方案的有效性。

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