油气开采出砂:机理、影响因素、预测与展望

0 ENERGY & FUELS
Haoze Wu , Shui-Long Shen , Annan Zhou
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引用次数: 0

摘要

出砂给油气开采带来了巨大挑战,特别是在弱胶结油藏和非常规地层中。文献计量分析强调了人们对出砂的日益关注,展示了计算方法、地质力学和人工智能(AI)应用的相关进展。在理解多物理场耦合、机械故障和侵蚀以及将风险评估指标与基于人工智能的方法相结合方面仍存在重大差距。本文对出砂机理进行了全面的研究。具体来说,它研究了多物理场耦合、机械故障和侵蚀过程的作用。此外,还对储层特征、生产策略、完井方法等关键影响因素进行了评价。总结了关键风险评价指标,为业务决策提供指导。为了解决传统实验、理论和数值方法的局限性,本研究对基于人工智能的方法进行了深入的评估,包括机器学习和专家系统。通过在生产规模和实验室规模的数据集上验证这些方法,该综述证明了它们具有卓越的预测精度和捕获控制出砂的非线性相互作用的能力。提出了一个强调人工智能与实时监测相结合的概念框架,以实现适应性和高效的出砂管理。这篇综述弥补了现有的知识空白,为提高油气开采的安全性和可持续性提供了实用的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Sand production during hydrocarbon exploitation: Mechanisms, factors, prediction, and perspectives

Sand production during hydrocarbon exploitation: Mechanisms, factors, prediction, and perspectives
Sand production poses significant challenges for hydrocarbon extraction, particularly in weakly consolidated reservoirs and unconventional formations. This bibliometric analysis highlights the growing focus on sand production, showcasing the relevant advancements in computational methods, geomechanics, and artificial intelligence (AI) applications. Significant gaps remain in understanding multiphysics coupling, mechanical failure, and erosion, and in integrating risk assessment indices with AI-based approaches. This review paper provides a comprehensive examination of sand production mechanisms. Specifically, it investigates the roles of multiphysics coupling, mechanical failure, and erosion processes. In addition, key influencing factors such as reservoir characteristics, production strategies, and completion methods are evaluated. Key risk assessment indices are summarized to provide guidance for operational decision-making. To address the limitations of the traditional experimental, theoretical, and numerical approaches, this study provides an in-depth evaluation of AI-based methods, including machine learning and expert systems. By validating these methods across production-scale and laboratory-scale datasets, this review demonstrates their superior predictive accuracy and capacity to capture the non-linear interactions governing sand production. A conceptual framework was proposed that emphasises the integration of AI with real-time monitoring to enable adaptive and efficient sand production management. This review bridges the existing knowledge gaps and provides practical insights for improving the safety and sustainability of hydrocarbon recovery.
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