Development of Petroleum Applications and their Benefits Using Artificial Intelligence
Rawia Mansour
Egyptian Petroleum Research Institute (EPRI), 1 Elzhoor Region, Box: 11727, Cairo, Egypt.
Ali Mohamed Elshafei *
Department of Microbial Chemistry, National Research Centre, 33 El Bohouth St. (Former El Tahrir St.), Dokki, Giza, P.O.Box: 12622, Egypt.
*Author to whom correspondence should be addressed.
Abstract
The application of AI and ML across various industries, such as manufacturing and petroleum, has led to innovative solutions that enhance productivity, accuracy, and decision-making capabilities. PCA was used to identify key GAI and MLA variables that influence the performance of the oil and gas value chain. SEM was employed to assess the regression equations related to their application. Recently, significant advancements in artificial intelligence (AI) technology have rapidly expanded within the petroleum industry, presenting enormous potential for growth and innovation. Generative Artificial Intelligence (GAI) and Machine Learning Algorithms (MLA) are becoming increasingly important in the oil and gas industry due to rapid advancements in society and technology. Principal Component Analysis (PCA) was utilized to identify critical variables influencing performance in the oil and gas value chain, and their effects were evaluated using Structural Equation Modeling (SEM). To effectively make decisions in the oil and gas value chain, it is essential to utilize advanced processing and analysis tools because of the vast amo unt of data generated by real-time monitoring of reservoirs and well operations. Machine learning (ML) is a powerful subset of artificial intelligence (AI) that utilizes models and algorithms to analyze historical data and extract insights. AI is a groundbreaking technology that enables machines to mimic human behavior.
Keywords: Petroleum applications, artificial intelligence, energy