Integrated Application of Artificial Intelligence and Remote Sensing Techniques for Improved Subsurface Resource Exploration
Nurtas M. Orynbassarova E. Mohammed M.A. Nurmakhambet S. Altaibek A. Serikbayeva E. Iskakov B.
February 2026Engineered Science Publisher
Engineered Science
2026#39
Mineral exploration is undergoing a significant transformation driven by the integration of remote sensing technologies and artificial intelligence (AI). While conventional methods remain foundational, they are often constrained by high costs, limited spatial coverage, and subjective data interpretation. This review critically examines the emerging synergy between multisensory remote sensing platforms and AI-based analytical frameworks, highlighting their potential to enhance the accuracy, efficiency, and scalability of subsurface mineral prospecting. This study reviews traditional geophysical methods alongside the evolving roles of satellite and airborne platforms in mineral exploration. Particular attention is given to recent advancements in data-driven analytics, encompassing machine learning, deep learning, and hybrid physics-informed models. Emphasis is placed on sensor fusion, real-time geospatial mapping, and the integration of explainable AI to improve model interpretability and transparency. The study also addresses key challenges, including the limited availability of labelled ground-truth data, the difficulty of achieving model generalization across diverse geological settings, and the ethical implications associated with the application of AI in geosciences. By synthesizing insights from recent case studies and state-of-the-art methodologies, this paper outlines future research directions aimed at fostering more accurate, efficient, and sustainable approaches to mineral exploration.
Artificial intelligence , Deep learning , Machine learning , Mineral exploration , Remote sensing
Text of the article Перейти на текст статьи
Institute of Ionosphere, Gardening Partnership “Ionosphere”, 117, Almaty, 050020, Kazakhstan
Satbayev University, 22 Satbayev Street, Almaty, 050013, Kazakhstan
Faculty of Science, Sohag University, Sohag University Street, 82524, Egypt
International Information Technology University, 34/1 Manas Street, Almaty, 050000, Kazakhstan
Institute of Ionosphere
Satbayev University
Faculty of Science
International Information Technology University
10 лет помогаем публиковать статьи Международный издатель
Книга Публикация научной статьи Волощук 2026 Book Publication of a scientific article 2026