relation: https://khub.utp.edu.my/scholars/15056/ title: Artificial intelligence approach to total organic carbon content prediction in shale gas reservoir using well logs: A review creator: Rahaman, M.S.A. creator: Islam, J. creator: Watada, J. creator: Vasant, P. creator: Alhitmi, H.K. creator: Hossain, T.M. description: The most important element for the exploration and development of oil and oil shale is total organic carbon (TOC). TOC estimation is considered a challenge for geologists since laboratory methods are expensive and time-consuming. Therefore, due to the complex and nonlinear relationship between well logs and TOC, researchers have begun to use artificial intelligence (AI) techniques. Hence, the purpose of this research is to explore new paradigms and methods for AI techniques. First, this article provides a recent overview of selected AI technologies and their applications, including artificial neural networks (ANNs), convolutional neural networks (CNNs), hybrid intelligent systems (HISs), and support vector machines (SVMs) as well as fuzzy logic (FL), particle swarm optimization (PSO). Second, this article explores and discusses the benefits and pitfalls of each type of AI technology. The study found that hybrid intelligence technology was the most successful and independent AI model with the highest probability of infer-ring properties of oil shale oil and gas fields (such as TOC) from wireline logs. Finally, some possible combinations are proposed that have not yet been investigated. © 2021 ICIC International. publisher: ICIC International date: 2021 type: Article type: PeerReviewed identifier: Rahaman, M.S.A. and Islam, J. and Watada, J. and Vasant, P. and Alhitmi, H.K. and Hossain, T.M. (2021) Artificial intelligence approach to total organic carbon content prediction in shale gas reservoir using well logs: A review. International Journal of Innovative Computing, Information and Control, 17 (2). pp. 539-563. ISSN 13494198 relation: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85102798358&doi=10.24507%2fijicic.17.02.539&partnerID=40&md5=5cbcc34ad13e2d3b0cf9e90fd873fd8e relation: 10.24507/ijicic.17.02.539 identifier: 10.24507/ijicic.17.02.539