Uncertainty and Explainable Analysis of Machine Learning Model for Reconstruction of Sonic Slowness Logs
Hua Wang, Yuqiong Wu, Yushun Zhang, Fuqiang Lai, Zhou Feng, Bing Xie,, Ailin Zhao

TL;DR
This paper presents an explainable machine learning approach using NGBoost to predict missing sonic logs in boreholes, providing uncertainty estimates and interpretability insights aligned with physical principles.
Contribution
It introduces an ensemble learning model with uncertainty quantification and interpretability for sonic log prediction, validated against multiple methods and grounded in petrophysical understanding.
Findings
NGBoost outperforms other ensemble methods in prediction accuracy.
Uncertainty estimates correlate with log quality and physical plausibility.
SHAP analysis reveals key input logs influencing predictions.
Abstract
Logs are valuable information for oil and gas fields as they help to determine the lithology of the formations surrounding the borehole and the location and reserves of subsurface oil and gas reservoirs. However, important logs are often missing in horizontal or old wells, which poses a challenge in field applications. In this paper, we utilize data from the 2020 machine learning competition of the SPWLA, which aims to predict the missing compressional wave slowness and shear wave slowness logs using other logs in the same borehole. We employ the NGBoost algorithm to construct an Ensemble Learning model that can predicate the results as well as their uncertainty. Furthermore, we combine the SHAP method to investigate the interpretability of the machine learning model. We compare the performance of the NGBosst model with four other commonly used Ensemble Learning methods, including…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Hydraulic Fracturing and Reservoir Analysis · Drilling and Well Engineering
MethodsShapley Additive Explanations
