Real Time Cloud-Based Automation for Formation Evaluation Optimization, Risk Mitigation and Decarbonization

R. Nye, C. Mejia, Evgeniya Dontsova
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Abstract

Recent developments in artificial intelligence (AI) have enabled upstream exploration and production companies to make better, faster and accurate decisions at any stage of well construction, while reducing operational expenditure and risk, increasing logistic efficiencies. The achieved optimization through digitization at the wellsite will significantly reduce the carbon emissions per well drilled when fully embraced by the industry. In addition, an industry pushed to drill in more challenging environments, they must embrace safer and more practical methods. An increase in prediction techniques, to generate synthetic formation evaluation wellbore logs, has unlocked the ability to implement a combination of predictive and prescriptive analytics with petrophysical and geochemical workflows in real time. The foundation of the real time automation is based on advanced machine learning (ML) techniques that are deployed via cloud connectivity. Three levels of logging precision are defined in the automated workflow based on the data inputs and machine learning models. The first level is the forecasting ahead of the bit that implements advanced machine learning using historical data, aiding proactive operational decisions. The second level has improved precision by incorporating real time drilling measurements and providing a credible contingency to for wellbore logging program. The last level incorporates petrophysical workflows and geochemical measurements to achieve the highest precision for logging prediction in the industry. Supervised and unsupervised machine learning models are presented to demonstrate the path for automation. Precision above 95% in the real time automated workflows was achieved with a combination of physics and advanced machine learning models. The automation of the workflow has assisted with optimization of logging programs utilizing technology with costly lost in hole charges and high rate of tool failures in offshore operations. The optimization has reduced the requirement for logistics associated with logging and eliminated the need for radioactive sources and lithium batteries. Highest precision in logging prediction has been achieved through an automated workflow for real time operations. In addition, the workflow can also be deployed with robotics technology to automate sample collection, leading to increased efficiencies.
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基于实时云的地层评估优化、风险缓解和脱碳自动化
人工智能(AI)的最新发展使上游勘探和生产公司能够在建井的任何阶段做出更好、更快、更准确的决策,同时降低运营支出和风险,提高物流效率。通过井场数字化实现的优化将大大减少每口井的碳排放。此外,随着钻井行业不断向更具挑战性的环境发展,他们必须采用更安全、更实用的方法。随着预测技术的发展,生成综合地层评价井眼测井曲线,实现了预测和规范分析与岩石物理和地球化学工作流程实时结合的能力。实时自动化的基础是基于通过云连接部署的先进机器学习(ML)技术。在基于数据输入和机器学习模型的自动化工作流中定义了三个级别的日志精度。第一层是提前预测,利用历史数据实现先进的机器学习,帮助主动做出操作决策。第二级通过结合实时钻井测量,提高了精度,并为井眼测井程序提供了可靠的应急方案。最后一级结合了岩石物理工作流程和地球化学测量,实现了业内最高的测井预测精度。提出了有监督和无监督机器学习模型来演示自动化的路径。通过结合物理和先进的机器学习模型,在实时自动化工作流程中实现了95%以上的精度。在海上作业中,自动化工作流程有助于优化测井程序,同时降低了昂贵的井漏费用和高工具故障率。优化减少了与测井相关的物流需求,消除了对放射源和锂电池的需求。通过实时操作的自动化工作流程,实现了最高精度的测井预测。此外,该工作流程还可以部署机器人技术来自动收集样品,从而提高效率。
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