Abstract

The oil and gas industry plays a vital role in meeting the ever-growing energy demand of the human race needed for its sustainable existence. Newer unconventional wells are drilled for the extraction of hydrocarbons that requires advanced innovations to encounter the challenges associated with the drilling operations. The type of drill bits utilized in any drilling operation has an economical influence on the overall drilling operation. The selection of suitable drill bits is a challenging task for driller while planning for new wells. Usually, when it comes to deciding the drill bit type, generally, the data of previously drilled wells present in similar geological formation are analyzed manually, making it subjective, erroneous, and time consuming. Therefore, the main objective of this study was to propose an automatic data-driven bit type selection method for drilling the target formation based on the Optimum Penetration Rate (ROP). Response Surface Methodology (RSM) and Artificial Bee Colony (ABC) have been utilized to develop a new data-driven modeling approach for the selection of optimum bit type. Data from three nearby Norwegian wells have been utilized for the testing of the proposed approach. RSM has been implemented to generate the objective function for ROP due to its strong data-fitting characteristic, while ABC has been utilized to locate the global optimal value of ROP. The proposed model has been generated with a 95% confidence level and compared with the existing model of Artificial Neural Network and Genetic Algorithm. The proposed approach can also be applied over any other geological field to automate the drill bit selection, which can minimize human error and drilling cost. The United Nations Development Programme also promotes innovations that are economical for industrial sectors and human sustainability.

Highlights

  • Drilling operations are performed to extract natural oil and gas from underlying reservoirs

  • This study aims to investigate Response Surface Methodology (RSM) and Artificial Bee Colony (ABC) combination for automatic drill bit selection as well as overcome the issues related to the existing Artificial Neural Networks (ANN)-based bit selection model

  • RSM and ABC combination has been proposed to select drill bit type based on the optimum values of Rate of Penetration (ROP)

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Summary

Introduction

Drilling operations are performed to extract natural oil and gas from underlying reservoirs. With ever-increasing energy demand, the oil and gas industry requires newer innovative technologies that are more economic and efficient for the sustainable development of human civilization. Innovations in the oil and gas industry will help in the proper extraction and utilization of natural resources with a longer sustainable period of hydrocarbon production. This will encourage a global economy that influences human sustainability, as clearly mentioned in the sustainable development goals of the United Nation Development Programme (UNDP). The drilling of oil and gas wells is an expansive task that involves huge financial investments and electrical powers consumptions at the drill site.

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