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This analysis challenges the typical way interventions have been planned and executed, both from an operational and commercial basis, and examines where there is room for significant improvement in the industry. Perhaps more importantly, it examines the case for performing interventions and tries to explain the headwinds in what is an opportunity for both financial and net zero goal reasons. Benchmarked data has already shown that opportunity absolutely exists to do more, and the authors discuss why the intervention opportunity is underserved. By appreciating the issues operators face when justifying and designing intervention activity, the challenges can thus be addressed by proper alignment to the best outcome. Intervention global expenditure is a small percentage of the total exploration and production spend while there is a strong value case for such operations. This study examines why this is so and then looks at how to address those issues. There is a huge array of well integrity and reservoir performance challenges that can bottleneck production and the industry has delivered many innovative solutions to address these issues. Reduced capital expenditure spend over the last years and the pressure to maintain production sustainably should create a perfect climate for intervention. However, an asset mindset that is often risk averse to entering a producing well, as well as complex workflows, will too often detract from the opportunity to intervene. New workflows—including digital—are discussed to demonstrate how identification of candidate wells and intervention techniques can be simplified, and how the success rate of the operations, as well as incremental production gains, can be determined more reliably to enable more robust outcomes. However, current contracting techniques and conventional key performance indicators can also cause further misalignment as to the true goal of interventions being to increase production sustainably. Those issues and how they have been resolved are addressed herein. New workflows and commercial models have been used to facilitate the quicker identification of intervention opportunities, enabling collaborative planning and optimal solution identification, combined with feedback mechanisms to ensure continuous close collaboration between technical experts enabled by digital tools can disrupt the conventional intervention model. Case examples will be provided to support the arguments made and demonstrate a new way of performing interventions. New digital workflows combined with strong collaborative, technical domain knowledge and a wide array of possible intervention solutions can change current typical intervention models. With these changes further improvements can then be made to the conventional business models used to maximize the intervention opportunity and the sustainability opportunities it brings with regard to getting the most out of existing infrastructure.
This analysis challenges the typical way interventions have been planned and executed, both from an operational and commercial basis, and examines where there is room for significant improvement in the industry. Perhaps more importantly, it examines the case for performing interventions and tries to explain the headwinds in what is an opportunity for both financial and net zero goal reasons. Benchmarked data has already shown that opportunity absolutely exists to do more, and the authors discuss why the intervention opportunity is underserved. By appreciating the issues operators face when justifying and designing intervention activity, the challenges can thus be addressed by proper alignment to the best outcome. Intervention global expenditure is a small percentage of the total exploration and production spend while there is a strong value case for such operations. This study examines why this is so and then looks at how to address those issues. There is a huge array of well integrity and reservoir performance challenges that can bottleneck production and the industry has delivered many innovative solutions to address these issues. Reduced capital expenditure spend over the last years and the pressure to maintain production sustainably should create a perfect climate for intervention. However, an asset mindset that is often risk averse to entering a producing well, as well as complex workflows, will too often detract from the opportunity to intervene. New workflows—including digital—are discussed to demonstrate how identification of candidate wells and intervention techniques can be simplified, and how the success rate of the operations, as well as incremental production gains, can be determined more reliably to enable more robust outcomes. However, current contracting techniques and conventional key performance indicators can also cause further misalignment as to the true goal of interventions being to increase production sustainably. Those issues and how they have been resolved are addressed herein. New workflows and commercial models have been used to facilitate the quicker identification of intervention opportunities, enabling collaborative planning and optimal solution identification, combined with feedback mechanisms to ensure continuous close collaboration between technical experts enabled by digital tools can disrupt the conventional intervention model. Case examples will be provided to support the arguments made and demonstrate a new way of performing interventions. New digital workflows combined with strong collaborative, technical domain knowledge and a wide array of possible intervention solutions can change current typical intervention models. With these changes further improvements can then be made to the conventional business models used to maximize the intervention opportunity and the sustainability opportunities it brings with regard to getting the most out of existing infrastructure.
Summary This analysis challenges the typical way interventions have been planned and executed, both on an operational and a commercial basis, and examines where there is room for significant improvement in the industry. Perhaps more importantly, it examines the case for performing interventions and tries to explain the challenges (“headwinds”) in what is an opportunity to achieve both financial and net-zero emissions goals. Benchmarked data have already shown that opportunity absolutely exists to do more, and we investigate why the intervention opportunity is underserved. By appreciating the issues operators face when justifying and designing intervention activities, the challenges can thus be addressed by proper alignment to the best outcome. Intervention global expenditure is a small percentage of the total cost of exploration and production, and yet there is a strong value case for such operations. This study examines why this is so and then looks at how to address those issues. There is a huge array of well integrity and reservoir performance challenges that can bottleneck production, and the industry has delivered many innovative solutions to address these issues. Reduced capital expenditure over the past years and the pressure to maintain production sustainably should create a perfect climate for intervention. However, an asset mindset that is often risk averse to entering a producing well, as well as complex workflows, will too often detract from the opportunity to intervene. New workflows—including digital—can simplify the identification of candidate wells, and intervention techniques can help determine the success rate of the operations, as well as incremental production gains, more reliably to enable more robust outcomes. However, current contracting techniques and conventional key performance indicators can also cause further misalignment as to the true goal of interventions being to increase production sustainably. Those issues and how they have been resolved are addressed in this study. New workflows and commercial models have been used to facilitate the quicker identification of intervention opportunities, enabling collaborative planning and optimal solution identification, combined with feedback mechanisms to ensure continuous close collaboration between technical experts enabled by digital tools, which can disrupt the conventional intervention model. Case examples support the arguments made and demonstrate a new way of performing interventions. New digital workflows combined with strong collaborative, technical domain knowledge and a wide array of possible intervention solutions can change current typical intervention models. With these changes, further improvements can then be made to the conventional business models used to maximize the intervention opportunity and the sustainability opportunities it brings with regard to getting the most out of existing infrastructure.
Operating under harsh conditions, mud motors frequently stall, causing the rotor to seize and a buildup of torque and standpipe pressure throughout the drill string. When not recovered from correctly, this event can cause abrupt changes in drill string torque, potentially damaging the motor and other BHA components. Current recovery methods usually rely upon field crews to detect and react correctly to this event, with results depending on varying levels of training, awareness, and other factors. This paper seeks to outline a method to automatically detect mud motor stalls in real-time using machine learning. The method itself involves unique methods of representing time series data that have yet to be applied to drilling data in the literature and provides a flexible technique for pattern recognition in general. With the assistance of subject matter experts, 200ms time series data for 100+ stalls were acquired and labeled to indicate the exact moments of a stall condition. The data itself consisted of surface values for torque, differential pressure, and other traces over which a model was developed that could successfully flag a particular instant as being in a stall. Significant effort was put towards feature engineering, and a novel application of spline regression was used to create robust features that were passed to a gradient-boosted random forest classification model to determine the probability of a stall occurring. During initial training, the model was validated against unseen stall data and achieved high (greater than 90%) precision and recall and had a reaction time superior to human operators, implying that it was a suitable candidate for integration into the control system. The model was then deployed to all rigs of this drilling contractor’s onshore rig fleet, providing a robust method for detecting even further motor stalls for additional training. The final model held acceptable performance and will be integrated into control systems to trigger automated stall recovery routines.
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