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IoT for Smart Operations in the Oil and Gas Industry. From Upstream to Downstream

  • Book

  • September 2022
  • Elsevier Science and Technology
  • ID: 5576587

IoT for Smart Operations in the Oil and Gas Industry elaborates on how the synergy between state-of-the-art computing platforms, such as Internet of Things (IOT), cloud computing, artificial intelligence, and, in particular, modern machine learning methods, can be harnessed to serve the purpose of a more efficient oil and gas industry. The reference explores the operations performed in each sector of the industry and then introduces the computing platforms and smart technologies that can enhance the operation, lower costs, and lower carbon footprint. Safety and security content is included, in particular, cybersecurity and potential threats to smart oil and gas solutions, focusing on adversarial effects of smart solutions and problems related to the interoperability of human-machine intelligence in the context of the oil and gas industry. Detailed case studies are included throughout to learn and research for further applications. Covering the latest topics and solutions, IoT for Smart Operations in the Oil and Gas Industry delivers a much-needed reference for the engineers and managers to understand modern computing paradigms for Industry 4.0 and the oil and gas industry.

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Table of Contents

1. Introduction to Smart O&G Industry
2. Smart Upstream Sector
3. Smart Midstream of O&G Industry
4. Smart Downstream Sector of O&G Industry
5. Threats and Side-Effects of Smart Solutions in Oil and Gas Industry
6. Designing a Disaster Management System for Smart Oil Fields
7. Case Study I: Analysis of Oil Spill Detection Using Deep Neural Networks
8. Case Study II: Evaluating DNN Applications in Smart O&G Industry

Authors

Razin Farhan Hussain PhD Candidate, University of Louisiana at Lafayette, Lafayette, LA, USA. Razin Farhan Hussain is currently a researcher at the High-Performance Cloud Computing (HPCC) laboratory at the University of Louisiana at Lafayette. His research interest includes efficient utilization of fog computing for Industry 4.0 applications and Deep Neural Network models. Ali Mokhtari Researcher, High-Performance Cloud Computing (HPCC) laboratory, University of Louisiana at Lafayette. Lafayette, LA, USA. Ali Mokhtari is currently a researcher at the High-Performance Cloud Computing (HPCC) laboratory at the University of Louisiana at Lafayette. His research interest is in deploying Artificial Intelligence (AI) methods in Edge-Cloud systems. Ali Ghalambor Formerly Professor, University of Louisiana at Lafayette, Lafayette, LA, USA. Ali Ghalambor, P.E. is currently an international consultant with more than 45 years of industrial and academic experience. He served as the API Endowed Professor, Head of the Petroleum Engineering Department, and Director of the Energy Institute at the University of Louisiana at Lafayette. Mohsen Amini Salehi Associate Professor, School of Computing and Informatics, University of Louisiana at Lafayette, Lafayette, LA, USA. Mohsen Amini Salehi is currently Associate Professor at the School of Computing and Informatics, University of Louisiana at Lafayette. He is the director of High-Performance Cloud Computing (HPCC) laboratory where researchers explore the applications of Cloud and Edge computing in Industry 4.0 use cases.