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Depot Institutionnel de l'UMBB >
Thèses de Doctorat et Mémoires de Magister >
Géophysique >
Doctorat >
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http://dlibrary.univ-boumerdes.dz:8080/handle/123456789/14914
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Titre: | Fuzzy machine learning contribution in reservoir characterization from well-logging data |
Auteur(s): | Cherana, Amina Aliouane, Leila(Directeur de thèse) |
Mots-clés: | Neuro-fuzzy Fuzzy systems Well-logging data |
Date de publication: | 2024 |
Editeur: | Universite M'Hamed Bougara Boumerdès : Faculté des Hydrocarbures et de la Chimie |
Résumé: | This thesis presents a comprehensive exploration of the integration of Neuro-Fuzzy Systems (NFS)
within the domain of reservoir characterisation, with a specific focus on the analysis of petrophysical
data in both conventional and unconventional reservoirs, notably within the Algerian Sahara region.
Leveraging recent advancements in machine learning, neural networks, and fuzzy logic, this research
elucidates the pivotal role of NFS as hybrid machine learning systems in augmenting reservoir
characterisation methodologies. Drawing upon two peer-reviewed publications, this thesis embarks on
an elaborate work to contextualize the latest developments in NFS within the broader domain of machine
learning applications in reservoir characterisation.
In the first foundational chapter, we delineate the fundamental principles underpinning machine
learning, fuzzy logic, and the amalgamation thereof in the form of Neuro-Fuzzy Systems. Through a
rigorous exposition, the theoretical underpinnings and operational mechanisms of these paradigms are
elucidated, laying the groundwork for subsequent chapters.
A meticulous examination of contemporary machine learning applications in reservoir characterisation
forms the essence of chapter two. By synthesising existing literature, we distinguish prevalent
methodologies, challenges, and advancements in employing machine learning techniques for reservoir
characterisation tasks, thereby providing a comprehensive overview of the current status.
Building upon the theoretical framework established in preceding chapters, Chapter 3 explores the
application of unsupervised fuzzy logic methods for lithology classification. Through empirical
investigations, the efficacy of fuzzy logic algorithms in delineating lithological boundaries is assessed,
contributing to enhanced reservoir characterisation workflows.
Chapter four undertakes the task of predicting porosity and permeability in a conventional reservoir
situated within the Algerian Sahara region. Leveraging machine learning techniques, predictive models
are developed to accurately estimate these critical reservoir properties, thereby facilitating informed
decision-making in petroleum exploration and production endeavours.
In the concluding chapter, the research findings are synthesized, and key insights gleaned from the
empirical investigations are elucidated. Moreover, recommendations for future research endeavours
aimed at further enhancing the efficacy and applicability of automated methods in predicting
hydrocarbon reservoir properties are delineated, underscoring the imperative for continued
interdisciplinary collaboration and innovation in the field of reservoir characterisation |
Description: | 114 p. : ill. ; 30 cm |
URI/URL: | http://dlibrary.univ-boumerdes.dz:8080/handle/123456789/14914 |
Collection(s) : | Doctorat
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