Smart integration of kriging and machine learning for ash-based coal quality estimation in sparse drillhole environments

dc.contributor.authorGebretsadik, A
dc.contributor.authorOkada, N
dc.contributor.authorItano, R
dc.contributor.authorOhtomo, Y,
dc.contributor.authorMathews, G
dc.contributor.authorKawamura, Y
dc.date.accessioned2026-01-08T07:12:31Z
dc.date.issued2025
dc.description.abstractEffective coal quality estimation, particularly ash content prediction, plays a vital role in mine planning, resource evaluation, and environmental management. However, conventional geostatistical methods, such as kriging, often face limitations in sparsely drilled areas due to their linear assumptions and inability to capture complex geological variability. This study implements a residual-based integration of geostatistics and machine learning for ash estimation. Ordinary kriging was first applied using a spherical variogram with strong geometric anisotropy (ranges: 2500 m horizontal, 20 m vertical) and a negligible (≈0) nugget indicated by the experimental variogram. The kriging baseline achieved RMSE = 1.485 (leave-one-out), and kriging variance was retained as an uncertainty indicator. Machine learning algorithms, including support vector machine, XGBoost, random forest, and LightGBM were then trained on the kriging residuals, incorporating the kriging variance as an additional input feature to capture complex non-linear patterns. The models were optimized using advanced hyperparameter tuning methods such as GridSearchCV and genetic algorithm. The hybrid framework substantially improved predictive accuracy, with the optimized random forest model achieving a reduced RMSE of 1.26 on the test set. These results demonstrate that integrating geostatistics with AI-based residual modeling enhances estimation robustness in sparse-data mining environments. The improvement, reflected in a 15% reduction in RMSE compared to kriging alone, provides a statistically significant basis for coal quality prediction, particularly in data-scarce environments.
dc.identifier.conferenceInternational Symposium on Earth Resources Management and Environment - ISERME 2025
dc.identifier.departmentDepartment of Earth Resources Engineering
dc.identifier.doihttps://doi.org/10.31705/ISERME.2025.23
dc.identifier.emailangstg2007@gmail.com
dc.identifier.issn2961-5372
dc.identifier.pgnos156p.
dc.identifier.placeMoratuwa, Sri Lanka
dc.identifier.proceedingProceedings of the 9th International Symposium on Earth Resources Management & Environment
dc.identifier.urihttps://dl.lib.uom.lk/handle/123/24698
dc.language.isoen
dc.publisherDepartment of Earth Resources Engineering, University of Moratuwa, Sri Lanka
dc.titleSmart integration of kriging and machine learning for ash-based coal quality estimation in sparse drillhole environments
dc.typeConference-Abstract

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