Machine Learning Model for Drilling Equipment Recommender System for Improved Decision Making and Optimum Performance

C. Kloucha, B. El Yossef, Imad Al Hamlawi, Muzahidin M Salim, Wiliem Pausin, Anik Pal, Hussein Mustapha, Soumil Shah, A. Hussein
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Abstract

The oil industry, in its constant strive to maximize gains out of operational data is constantly exploring new horizons where to combine the latest advances in data science and digitalization, into the areas where key decisions to drive economical and operational decisions reside with an aim at optimizing the capital expenditure through sound decision making. High volume operational data has been recognized as hiding many opportunities where the captured details these repositories that include real time logs and bit run summaries, provide a clear opportunity where to extract insights to support optimized decisions in terms of equipment selection to achieve the desired operational objectives. Current possibilities within data science have opened the possibilities through viable solutions, which in this case, aims at providing advise on which equipment in terms of BHA and Bits to select, that would yield the desired outcome for a drilling run. The whole exercise being based on evidence gathered from previous runs where the details for the equipment, the relevant well characteristics, and the observed rates of penetration and the used parameters, are taken into consideration to provide the optimum combination to be implemented in new runs. The present study describes the methodology in terms of data utilization, data science method development and solution deployment, with the associated issues that had to be addressed in order to provide a viable solution in terms of data utilization, technical validity and final user utilization, as well as a series of recommendations to be addressed within any such endeavors to assure the value addition.
基于机器学习的钻井设备推荐系统决策优化模型
石油行业一直在努力从运营数据中获得最大收益,并不断探索新的领域,将数据科学和数字化的最新进展结合到推动经济和运营决策的关键决策领域,目的是通过合理的决策来优化资本支出。大量的操作数据被认为隐藏了许多机会,其中捕获的详细信息(包括实时日志和位运行摘要)提供了一个明确的机会,可以从中提取见解,以支持设备选择方面的优化决策,以实现预期的操作目标。当前数据科学的可能性已经通过可行的解决方案打开了可能性,在这种情况下,旨在为选择BHA和钻头方面的设备提供建议,以获得钻井所需的结果。整个作业是基于从以前的作业中收集到的证据,其中考虑了设备的细节、相关的井特性、观察到的钻速和使用的参数,以提供在新作业中实施的最佳组合。本研究描述了数据利用、数据科学方法开发和解决方案部署方面的方法,以及必须解决的相关问题,以便在数据利用、技术有效性和最终用户利用率方面提供可行的解决方案,以及在任何此类努力中需要解决的一系列建议,以确保增值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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