Abstract

Stuck pipe incidents are one of the contributors to non-productive time (NPT), where they can result in a higher well cost. This research investigates the feasibility of applying machine learning to predict events of stuck pipes during drilling operations in petroleum fields. The predictive model aims to predict the occurrence of stuck pipes so that relevant drilling operation personnel are warned to enact a mitigation plan to prevent stuck pipes. Two machine learning methodologies were studied in this research, namely, the artificial neural network (ANN) and support vector machine (SVM). A total of 268 data sets were successfully collected through data extraction for the well drilling operation. The data also consist of the parameters with which the stuck pipes occurred during the drilling operations. These drilling parameters include information such as the properties of the drilling fluid, bottom-hole assembly (BHA) specification, state of the bore-hole and operating conditions. The R programming software was used to construct both the ANN and SVM machine learning models. The prediction performance of the machine learning models was evaluated in terms of accuracy, sensitivity and specificity. Sensitivity analysis was conducted on these two machine learning models. For the ANN, two activation functions—namely, the logistic activation function and hyperbolic tangent activation function—were tested. Additionally, all the possible combinations of network structures, from [19, 1, 1, 1, 1] to [19, 10, 10, 10, 1], were tested for each activation function. For the SVM, three kernel functions—namely, linear, Radial Basis Function (RBF) and polynomial—were tested. Apart from that, SVM hyper-parameters such as the regularization factor (C), sigma (σ) and degree (D) were used in sensitivity analysis as well. The results from the sensitivity analysis demonstrate that the best ANN model managed to achieve an 88.89% accuracy, 91.89% sensitivity and 86.36% specificity, whereas the best SVM model managed to achieve an 83.95% accuracy, 86.49% sensitivity and 81.82% specificity. Upon comparison, the ANN model is the better machine learning model in this study because its accuracy, sensitivity and specificity are consistently higher than those of the best SVM model. In conclusion, judging from the promising prediction accurateness as demonstrated in the results of this study, it is suggested that stuck pipe prediction using machine learning is indeed practical.

Highlights

  • A stuck pipe can be defined as the inability to retrieve a drill string by means of pulling it out of the bore-hole even though the drill string does not lose its ability to move down, rotate and circulate partially or freely [1]

  • Since the purpose of this research was to focus on machine learning models, the artificial neural network (ANN) and support vector machine (SVM) machine learning methodologies were to be used to generate the stuck pipe prediction model

  • A total of 2000 ANN models were intended to be produced upon the finishing of the training process

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Summary

Introduction

A stuck pipe can be defined as the inability to retrieve a drill string by means of pulling it out of the bore-hole even though the drill string does not lose its ability to move down, rotate and circulate partially or freely [1]. Stuck pipes can have a huge impact on non-productive time (NPT), where drilling operation progress is hindered, resulting in higher well costs. NPT can be defined as an event described that causes the drilling operation to stop [4]. Some studies define NPT as time lost due to flat time that is caused by problems such as wellbore problems and equipment failures [5]. According to a study conducted by Saudi Aramco in the year 2012, stuck pipes account for 25% of the NPT or the equivalent of two rig-years’ worth of additional cost every year [6].

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