人工智能在地热资源勘探中的应用:综述

Mahmoud AlGaiar, Mamdud Hossain, Andrei Petrovski, Aref Lashin, Nadimul Faisal
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引用次数: 0

摘要

人工智能(AI)在地热勘探中的重要性与日俱增,大大提高了资源识别的效率。本综述探讨了当前的人工智能应用,重点关注所使用的算法、应对的挑战以及创造的机遇。此外,综述还重点介绍了过去十年机器学习在地热勘探中的应用增长情况,展示了人工智能如何改进了对地下数据的分析,以识别潜在资源。神经网络、支持向量机和决策树等人工智能技术被用于估算地下温度、预测岩石和流体特性以及确定最佳钻探位置。其中,神经网络是应用最广泛的技术,可进一步提高勘探效率。然而,人工智能在地热勘探中的广泛应用受到各种挑战的阻碍,例如数据的可获取性、数据质量以及对行业专业人员进行量身定制的数据科学培训的需求。此外,综述还强调了数据工程方法、数据扩展和标准化的重要性,以便为地热勘探开发准确、可推广的人工智能模型。综述认为,将人工智能融入地热勘探,为加快地热能源资源的开发带来了巨大希望。通过有效应对关键挑战和利用人工智能技术,地热行业可以释放出具有成本效益和可持续的发电机会。
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Applications of artificial intelligence in geothermal resource exploration: A review

Artificial intelligence (AI) has become increasingly important in geothermal exploration, significantly improving the efficiency of resource identification. This review examines current AI applications, focusing on the algorithms used, the challenges addressed, and the opportunities created. In addition, the review highlights the growth of machine learning applications in geothermal exploration over the past decade, demonstrating how AI has improved the analysis of subsurface data to identify potential resources. AI techniques such as neural networks, support vector machines, and decision trees are used to estimate subsurface temperatures, predict rock and fluid properties, and identify optimal drilling locations. In particular, neural networks are the most widely used technique, further contributing to improved exploration efficiency. However, the widespread adoption of AI in geothermal exploration is hindered by challenges, such as data accessibility, data quality, and the need for tailored data science training for industry professionals. Furthermore, the review emphasizes the importance of data engineering methodologies, data scaling, and standardization to enable the development of accurate and generalizable AI models for geothermal exploration. It is concluded that the integration of AI into geothermal exploration holds great promise for accelerating the development of geothermal energy resources. By effectively addressing key challenges and leveraging AI technologies, the geothermal industry can unlock cost-effective and sustainable power generation opportunities.

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Issue Information Two-year growth of Deep Underground Science and Engineering: A perspective Acknowledgment of reviewers A review of mechanical deformation and seepage mechanism of rock with filled joints Issue Information
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