{"title":"生成式人工智能和机器学习算法在石油和天然气领域的潜在应用:优势与前景","authors":"Edward G. Ochieng , Diana Ominde , Tarila Zuofa","doi":"10.1016/j.techsoc.2024.102710","DOIUrl":null,"url":null,"abstract":"<div><p>With the rapid advancement of technology and societies, the global energy sector now acknowledges that by integrating contemporary digital technologies into their operations and capabilities, can improve their competitive advantage and innovation performance and processes. Moreover, energy operators are also facing a significant undertaking: how to best use and secure large amounts of data that promote sustainable productivity performance and minimise potential threats in the oil and gas value chain and project operations. In view of the foregoing, various facets like Generative Artificial Intelligence (GAI) and Machine Learning Algorithms (MLA) are increasingly gaining popularity within oil and gas sector operations. Thus, we explored how GAI and ML algorithms can enhance oil and gas value chain productivity performance. The Principal Component Analysis (PCA) was employed to identify significant GAI and MLA variables influencing performance in the oil and gas value chain, while Structural Equation Modelling (SEM) was used to test regression equations related to their application. The study found that risk portfolios and profiles can be appraised throughout the value chain by effectively utilising GAI and ML algorithms in upstream, midstream and downstream undertakings. While these findings are noteworthy and have significant implications for current practice, the paper advocates that an array of digital technologies beyond GAI and ML can still be examined during future studies to demonstrate a holistic perspective on how digital transformation can be achieved across the energy sector value and project operations.</p></div>","PeriodicalId":47979,"journal":{"name":"Technology in Society","volume":"79 ","pages":"Article 102710"},"PeriodicalIF":10.1000,"publicationDate":"2024-09-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Potential application of generative artificial intelligence and machine learning algorithm in oil and gas sector: Benefits and future prospects\",\"authors\":\"Edward G. 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引用次数: 0
摘要
随着技术和社会的飞速发展,全球能源行业现已认识到,通过将当代数字技术融入其运营和能力,可以提高其竞争优势和创新绩效及流程。此外,能源运营商还面临着一项重大任务:如何以最佳方式利用和保护大量数据,以促进可持续的生产绩效,并最大限度地减少石油和天然气价值链和项目运营中的潜在威胁。有鉴于此,生成式人工智能(GAI)和机器学习算法(MLA)等各种方法在石油和天然气行业的运营中越来越受欢迎。因此,我们探讨了 GAI 和 ML 算法如何提高石油和天然气价值链的生产力绩效。我们采用了主成分分析法(PCA)来确定影响石油和天然气价值链绩效的重要 GAI 和 MLA 变量,同时采用结构方程建模法(SEM)来检验与它们的应用相关的回归方程。研究发现,通过在上游、中游和下游企业中有效利用 GAI 和 ML 算法,可以对整个价值链的风险组合和概况进行评估。虽然这些研究结果值得关注,并对当前实践具有重要意义,但本文认为,在未来的研究中,仍可对 GAI 和 ML 以外的一系列数字技术进行研究,以展示如何在整个能源行业价值和项目运营中实现数字化转型的整体视角。
Potential application of generative artificial intelligence and machine learning algorithm in oil and gas sector: Benefits and future prospects
With the rapid advancement of technology and societies, the global energy sector now acknowledges that by integrating contemporary digital technologies into their operations and capabilities, can improve their competitive advantage and innovation performance and processes. Moreover, energy operators are also facing a significant undertaking: how to best use and secure large amounts of data that promote sustainable productivity performance and minimise potential threats in the oil and gas value chain and project operations. In view of the foregoing, various facets like Generative Artificial Intelligence (GAI) and Machine Learning Algorithms (MLA) are increasingly gaining popularity within oil and gas sector operations. Thus, we explored how GAI and ML algorithms can enhance oil and gas value chain productivity performance. The Principal Component Analysis (PCA) was employed to identify significant GAI and MLA variables influencing performance in the oil and gas value chain, while Structural Equation Modelling (SEM) was used to test regression equations related to their application. The study found that risk portfolios and profiles can be appraised throughout the value chain by effectively utilising GAI and ML algorithms in upstream, midstream and downstream undertakings. While these findings are noteworthy and have significant implications for current practice, the paper advocates that an array of digital technologies beyond GAI and ML can still be examined during future studies to demonstrate a holistic perspective on how digital transformation can be achieved across the energy sector value and project operations.
期刊介绍:
Technology in Society is a global journal dedicated to fostering discourse at the crossroads of technological change and the social, economic, business, and philosophical transformation of our world. The journal aims to provide scholarly contributions that empower decision-makers to thoughtfully and intentionally navigate the decisions shaping this dynamic landscape. A common thread across these fields is the role of technology in society, influencing economic, political, and cultural dynamics. Scholarly work in Technology in Society delves into the social forces shaping technological decisions and the societal choices regarding technology use. This encompasses scholarly and theoretical approaches (history and philosophy of science and technology, technology forecasting, economic growth, and policy, ethics), applied approaches (business innovation, technology management, legal and engineering), and developmental perspectives (technology transfer, technology assessment, and economic development). Detailed information about the journal's aims and scope on specific topics can be found in Technology in Society Briefings, accessible via our Special Issues and Article Collections.