Asia-Pacific Offshore Exploration Symposium (APEX)
Application of Seismic Machine Learning for Reservoir Characterization in Deep-Water Exploration: A Case Study from North Kalimantan, Indonesia
Application of Seismic Machine Learning for Reservoir Characterization in Deep-Water Exploration: A Case Study from North Kalimantan, Indonesia
Authors: B1 (SKKMIGAS), Ferdinand Sibarani, Desianne Kinanthi, Jossy Inaray (AKIA PSC), Iswani Waryono, Wahyudin Suwarlan (2Pi Energy), Alvaro Chaveste (Geophysical Insights)
Oil and gas exploration in deep-water environments remains a compelling area of study. In geologically complex settings, accurate reservoir characterization is a critical parameter that must be rigorously assessed to ensure reliable subsurface understanding and informed decision-making
Seismic attributes are widely utilized to infer reservoir properties; however, their reliability is often compromised by seismic interference effects arising from resolution limitations, particularly tuning thickness
The seismic machine learning approach presented in this study operates at the seismic sample interval, which has significant implications for data analysis. By classifying multiple seismic attributes simultaneously at the sample level, this method facilitates a more robust assessment of their reservoir relevance, thereby enhancing seismic interpretation and improving subsurface understanding in the deep-water exploration setting of North Kalimantan, Indonesia.
Principal Component Analysis (PCA) is a linear multivariate technique widely recognized for its effectiveness in identifying seismic attributes, or combinations thereof, that exert significant interpretive influence. By transforming a large set of correlated seismic attributes into a reduced set of orthogonal components, PCA captures dominant variance patterns within the data, which frequently correspond to reservoir-related features
The selected seismic attributes are subsequently utilized as input for the Self-Organizing Map (SOM) algorithm, an unsupervised neural network technique. Numerous studies have demonstrated that integrating multiple seismic attributes within the SOM framework can generate a composite seismic volume that is more interpretable, revealing reservoir-related patterns and stratigraphic events even under conditions of limited well control
This study aims to leverage seismic-driven machine learning techniques for reservoir characterization to improve the fidelity of subsurface interpretation. By integrating advanced data analytics with geophysical workflows, the approach seeks to enhance reservoir mapping accuracy and mitigate uncertainties associated with well placement during exploration.
Event Details
📅 Date: 15-17 April 2026
📍 Location: Bali, Indonesia
Speaker info


















