The development prospects and key challenges of artificial intelligence technology in oil reservoir characterization

This paper explores recent advancements and future development trends in the application of artificial intelligence (AI) to oil reservoir characterization. It focuses in particular on breakthroughs in deep learning, machine learning, and multi-source data fusion that enhance the accuracy of reservoi...

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Bibliographic Details
Published inResources Data Journal Vol. 4; pp. 261 - 264
Main Authors Liding Wang, Zhenpeng Li
Format Journal Article
LanguageEnglish
Japanese
Published Resources Economics Research Board 17.08.2025
Subjects
Online AccessGet full text
ISSN2758-1438
DOI10.50908/rdj.4.0_261

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Summary:This paper explores recent advancements and future development trends in the application of artificial intelligence (AI) to oil reservoir characterization. It focuses in particular on breakthroughs in deep learning, machine learning, and multi-source data fusion that enhance the accuracy of reservoir description, automate data processing, enable real-time monitoring, and support dynamic prediction. The paper highlights innovative directions such as customized model development, human–machine collaborative decision-making, uncertainty quantification, and risk assessment, outlining key pathways through which AI is transforming reservoir characterization from traditional experience-based methods into intelligent, data-driven approaches. In addressing current challenges—including data complexity, limited model generalization, and adaptability to diverse application scenarios—it proposes targeted research directions and development strategies. This paper aims to provide a systematic and comprehensive technical reference for researchers and engineers in oil and gas exploration and development, promoting the deep integration of AI with reservoir characterization and contributing to the efficient and sustainable utilization of hydrocarbon resources.
ISSN:2758-1438
DOI:10.50908/rdj.4.0_261