Artificial Intelligence–Driven Asset Optimizer

Supriya Gupta, Abhishek Sharma, A. Abubakar
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引用次数: 6

Abstract

Currently, as oil and gas companies continue to face risk of volatility in oil prices, production optimization and maintenance play a critical role in driving operational excellence for the industry while maintaining good profit margins. E&P companies must maintain a focus on reducing unit cost/barrel. This can be achieved by reducing operating costs, increasing production, and reducing downtime. We propose a recommendation engine driven by artificial intelligence (AI) that seamlessly integrates subsurface information and production characteristics for knowledge extraction needed to optimize production operations across conventional and unconventional assets. We used a three-phase approach to designing and building an advisory system that ingests data, learns patterns, and feeds these learnings from the data into different functional workflows necessary for improving the efficiency and effectiveness of production operations. The system uses these mechanisms of knowledge extraction, statistical learning, and contextual adaptation as it evolves into an autonomous asset optimization system that can proactively recommend actions for effective decision making to lower the unit cost/barrel.
人工智能驱动的资产优化器
目前,由于油气公司继续面临油价波动的风险,生产优化和维护在推动行业卓越运营的同时保持良好的利润率方面发挥着至关重要的作用。勘探开发公司必须专注于降低单位成本/桶。这可以通过降低运营成本、提高产量和减少停机时间来实现。我们提出了一种由人工智能(AI)驱动的推荐引擎,该引擎可以无缝集成地下信息和生产特征,用于优化常规和非常规资产生产操作所需的知识提取。我们使用了一个三阶段的方法来设计和构建一个咨询系统,该系统可以摄取数据、学习模式,并将这些从数据中学习到的知识提供给不同的功能工作流程,以提高生产操作的效率和有效性。该系统利用这些知识提取、统计学习和环境适应机制,发展成为一个自主的资产优化系统,可以主动推荐有效决策的行动,以降低单位成本/桶。
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