Unsupervised machine learning for data-driven rock mass classification: addressing limitations in existing systems using drilling data
T. F. Hansen, A. Aarset

TL;DR
This paper presents an unsupervised machine learning approach using drilling data to improve rock mass classification, overcoming limitations of traditional systems by leveraging high-resolution data and advanced clustering techniques.
Contribution
It introduces a novel data-driven classification system based on MWD data, utilizing dimensionality reduction and clustering algorithms with domain knowledge integration.
Findings
Well-defined rock mass clusters can be formed from MWD data
Clustering results correlate with physical rock properties
Data-driven approach reduces human bias in classification
Abstract
Rock mass classification systems are crucial for assessing stability and risk in underground construction globally and guiding support and excavation design. However, these systems, developed primarily in the 1970s, lack access to modern high-resolution data and advanced statistical techniques, limiting their effectiveness as decision-support systems. We outline these limitations and describe how a data-driven system, based on drilling data, can overcome them. Using statistical information extracted from thousands of MWD-data values in one-meter sections of a tunnel profile, acting as a signature of the rock mass, we demonstrate that well-defined clusters can form a foundational basis for various classification systems. Representation learning was used to reduce the dimensionality of 48-value vectors via a nonlinear manifold learning technique (UMAP) and linear principal component…
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Taxonomy
TopicsDrilling and Well Engineering · Tunneling and Rock Mechanics · Mineral Processing and Grinding
