Compressional and Shear Sonic Log Determination Using Data-Driven Machine Learning Techniques

Research output: Contribution to conferencePaperpeer-review

Abstract

Shear (Vs) and compressional (Vp) sonic logs are important parameters required in reservoir exploration, development, recovery, geothermal operations, and fluid sequestration. Before the invention of the Dipole Sonic Log, older wells did not measure these essential parameters. Due to cost, these logs are not ubiquitous in all wells, especially Vs logs. Many researchers developed empirical correlations to predict Vs from Vp but have some limitations based on mineralogy, fluid types, porosity, and others. Due to the availability of massive data and technological advancements, machine learning methods have proven successful in measuring subsurface parameters from wireline logs. Although wireline logs carry vital information, domain knowledge is required to select relevant logs for model training since model performance depends on data. This study combined expert analysis with literature to select relevant logs
Original languageEnglish
Publication statusPublished - 2024

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