Search citation statements
Paper Sections
Citation Types
Year Published
Publication Types
Relationship
Authors
Journals
Stuck pipe events continue to be a major cause of non-productive time (NPT) in well construction operations. Considerable efforts have been made in the past to construct prediction models and early warning systems to prevent them—a trend that has intensified in recent years with the increased accessibility of artificial intelligence tools. This paper presents a comprehensive review of existing models and early-warning systems and proposes guidelines for future improvements. In this paper, we review existing prediction approaches for their merits and shortcomings, investigating five key aspects: (1) the frequency and spatial bias of the data with which the models are constructed, (2) the selection of the variable space, (3) the modeling approach, (4) the assessment of the model's performance, and (5) the model's facility to provide intuitive and interpretable outputs. The analysis of these aspects is combined with advancements in anomaly detection across other relevant domains, such as the internet of things, to construct guidelines for improvement of real-time stuck pipe prediction. Existing solutions for stuck pipe prediction face numerous challenges, allowing this problem area to remain a missing component in the broad scope of progressive drilling automation. In our analysis, we looked at notable approaches, including decentralized sticking prediction, sophisticated data-driven models coupled with explanation tools, and data-driven models coupled with physics-based simulations (hybrid sticking predictors). However, even these sophisticated approaches face challenges associated with: general, non-specific applicability; robustness; and interpretability. While the best approaches tackle some of these challenges, they often fail to address all of them simultaneously. Furthermore, we found that there is no standardized method for assessing these models’ performance or for conducting comparative studies. This lack of standardization leads to an unclear ranking of (the merits and shortcomings of) existing prediction models. Lastly, we encountered cases where unavailable information, i.e., information that would not be available when the model is deployed in the field for actual stuck pipe prediction, was employed in the models’ construction phase (we will refer to this as "data leakage"). These findings, along with good practices in anomaly detection, are compiled in terms of guidelines for the construction of improved stuck pipe prediction approaches. This paper is the first to comprehensively analyze existing methods for stuck pipe prediction and provide guidelines for future improvement to arrive at more universally applicable, real-time, robust and interpretable stuck pipe prediction. Moreover, the application of these guidelines is not limited to stuck pipe, and can be used for predictive modeling of other types of drilling abnormalities, such as lost circulation, drilling dysfunctions, etc. Additionally, these guidelines can be leveraged in any drilling application, whether it is for oil and gas recovery, geothermal energy, carbon storage, etc.
Stuck pipe events continue to be a major cause of non-productive time (NPT) in well construction operations. Considerable efforts have been made in the past to construct prediction models and early warning systems to prevent them—a trend that has intensified in recent years with the increased accessibility of artificial intelligence tools. This paper presents a comprehensive review of existing models and early-warning systems and proposes guidelines for future improvements. In this paper, we review existing prediction approaches for their merits and shortcomings, investigating five key aspects: (1) the frequency and spatial bias of the data with which the models are constructed, (2) the selection of the variable space, (3) the modeling approach, (4) the assessment of the model's performance, and (5) the model's facility to provide intuitive and interpretable outputs. The analysis of these aspects is combined with advancements in anomaly detection across other relevant domains, such as the internet of things, to construct guidelines for improvement of real-time stuck pipe prediction. Existing solutions for stuck pipe prediction face numerous challenges, allowing this problem area to remain a missing component in the broad scope of progressive drilling automation. In our analysis, we looked at notable approaches, including decentralized sticking prediction, sophisticated data-driven models coupled with explanation tools, and data-driven models coupled with physics-based simulations (hybrid sticking predictors). However, even these sophisticated approaches face challenges associated with: general, non-specific applicability; robustness; and interpretability. While the best approaches tackle some of these challenges, they often fail to address all of them simultaneously. Furthermore, we found that there is no standardized method for assessing these models’ performance or for conducting comparative studies. This lack of standardization leads to an unclear ranking of (the merits and shortcomings of) existing prediction models. Lastly, we encountered cases where unavailable information, i.e., information that would not be available when the model is deployed in the field for actual stuck pipe prediction, was employed in the models’ construction phase (we will refer to this as "data leakage"). These findings, along with good practices in anomaly detection, are compiled in terms of guidelines for the construction of improved stuck pipe prediction approaches. This paper is the first to comprehensively analyze existing methods for stuck pipe prediction and provide guidelines for future improvement to arrive at more universally applicable, real-time, robust and interpretable stuck pipe prediction. Moreover, the application of these guidelines is not limited to stuck pipe, and can be used for predictive modeling of other types of drilling abnormalities, such as lost circulation, drilling dysfunctions, etc. Additionally, these guidelines can be leveraged in any drilling application, whether it is for oil and gas recovery, geothermal energy, carbon storage, etc.
Recognizing stuck pipe signs in an earlier time and adopting appropriate action can greatly reduce non-productive time during drilling and improve drilling safety. The purpose of this paper is to propose a time series analysis approach and build a reliable and easy-to-use tool to automatically detect stuck pipe accurately and early. Based on the in-depth theoretical analysis and historical stuck pipe data analysis, main early stuck pipe indicators during different drill operations are identified. More than ten time series analysis algorithms and machine learning algorithms are utilized to capture subtle change trends and local change patterns in noisy real-time measured surface data during drilling, and a self-adaptive threshold value determination method is proposed to improve the detection accuracy under different data measurement quality. Moreover, correlation analyses are conducted on the multidimensional time series based on the studied rules and priori knowledge to reduce the false alarms caused by curtain drilling operations. An early stuck pipe detection software tool is built. The tool consumes both real-time and archived drilling data, and provides alarms when stuck pipe indicators are detected. 19 wells’ historical drill data are fed to the tool for algorithm verification, the results show that the tool can automatically detect all 22 stuck pipe incidents in the data set, among which, 5 incidents were detected 2 hours before the field recorded event time, 2 incidents were detected more than 1 hour before the field recorded time, 8 incidents were detected 3-42 minutes before, 4 incidents were detected about the same time as the field recorded time, and 3 incidents were detected less than 2 minutes later than the field recorded time. The average false alarm rate is about once per 48 hours operation time. The tool was also connected to the real-time drilling data in remote drilling operation support center. During the trail, two early stuck pipe signs are captured accurately. The computation time for each real-time data point is less than 0.5 second, which meets the real-time requirement. According to the demonstrated stuck pipe detection rate and false alarm rate, the tool is promising and beneficial for detecting stuck pipe in early time automatically, which improves the drilling safety and reduce non-productive time.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.
customersupport@researchsolutions.com
10624 S. Eastern Ave., Ste. A-614
Henderson, NV 89052, USA
This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.
Copyright © 2024 scite LLC. All rights reserved.
Made with 💙 for researchers
Part of the Research Solutions Family.