4.7 Article

Merging machine learning and geostatistical approaches for spatial modeling of geoenergy resources

Journal

INTERNATIONAL JOURNAL OF COAL GEOLOGY
Volume 276, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.coal.2023.104328

Keywords

Ordinary kriging; Ensemble super learner; Ordinary intrinsic collocated cokriging; Elliptical radial basis neural network

Ask authors/readers for more resources

Geostatistics is a widely used probabilistic approach in modeling earth systems. Recently, the integration of machine learning algorithms with geostatistical methods has shown potential for improving estimation accuracy in geological modeling.
Geostatistics is the most commonly used probabilistic approach for modeling earth systems, including quality parameters of various geoenergy resources. In geostatistics, estimates, either on a point or block support, are generated as a spatially-weighted average of surrounding samples. The optimal weights are determined through the stationary variogram model which accounts for the spatial structure of the samples. Recently, efficient modeling workflows using various machine learning algorithms (MLAs) have been expanded to the spatial context for modeling geological heterogeneity. The flexible use of MLAs as a spatial estimation tool stems mainly from the fact that unlike kriging, they do not require any variogram, nor do they depend strongly on a prior stationarity assumption (i.e., second order stationarity). This study evaluates the performance of two MLAs (ensemble super learner and elliptical radial basis neural network), ordinary kriging, and hybrid spatial modeling approaches using ordinary intrinsic collocated cokriging. The aforementioned modeling techniques are compared for estimating resources for four coal variables (wash yield, ash yield, calorific value and thickness) as an example. The results suggest that MLAs, when implemented alone, do not outperform ordinary kriging, but the estimation accuracy of the final model, measured by the root mean squared error tends to subtly improve (1.7% for wash yield, 6.98% for ash yield, 4.94% for calorific value and 0.36% for seam thickness) when MLAs and geostatistical algorithms are merged through the hybrid spatial modeling approaches.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available