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Artificial intelligence techniques and their applications in drilling fluid engineering: A review

机译:人工智能技术及其在钻井液工程中的应用:综述

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For an oil well to be said to have been successfully and conclusively drilled, the drilling fluid lies at the heart of the solution. Therefore, the guarantee to solving issues in oil well drilling is to contrive an optimal drilling fluid. However, there is usually a complex interplay of factors involved during drilling fluid formulation, property determination, its performance in the well and its relationship with other wellbore drilling parameters. This is so because drilling muds exhibit time dependent properties. This time dependency is the direct product of the synergy among the various active additives that make up the mud and the characteristic of each additive especially at downhole conditions where the effects of temperature and pressure are well pronounced. These additives are more often than not diverse in size, chemical activity, density and surface energy. Deriving knowledge from the data from these parameters in order to develop a functional relationship between them is a challenging task requiring advanced modelling techniques as well as human intuition and experience. The dependence on human intuition and on the experiential knowledge of professional mud engineers lays bare the shortcomings of traditional mud design techniques. Artificial intelligence techniques have been shown to alleviate this challenge. Exploiting the abundant literature on the various applications of artificial intelligence in oil and gas operations, several works that show how and what artificial intelligence techniques are used in the drilling fluid industry, and what have been achieved due to their use have been selected. In this paper, a review of existing artificial intelligence techniques and their applications in drilling fluid engineering is given. This paper also dug up and analyzed the strengths and pitfalls of each artificial intelligence technique. The examination of the strengths and deficiencies was done using the following virtues as the basic criteria: robustness against noise, self-organization, generalization ability, data volume requirements and the convergence speed. The artificial intelligence techniques presented in this paper include: artificial neural networks (ANNs), fuzzy logic, support vector machines (SVM), hybrid intelligent systems (HIS), genetic algorithms (GA), case based reasoning (CBR) and particle swarm algorithm (PSA). An overview of the applications of classical artificial intelligence in drilling fluid engineering is also presented. From the review, it was gathered that the ANN technique is the most widely applied in drilling fluid engineering accounting for over 54% of the papers reviewed; while lost circulation problem was the most predicted well problem related to drilling fluids accounting for over 17% of the mud problems predicted. It was also observed that a blend of AI techniques performed better than when each one of the AI techniques was used singly. Finally, judging the AI techniques on the criteria mentioned above, ANN was found to meet all the listed criteria except for its slow speed of convergence while ANN, GA, SVM and fuzzy logic were all found to be robust against noise.
机译:对于待售的油井已经成功和结论地钻井,钻井液位于溶液的心脏。因此,求解油井钻井问题的保证是为了实现最佳的钻井液。然而,通常存在钻井液制剂期间涉及的因素的复杂相互作用,性能测定,其在井中的性能及其与其他井筒钻井参数的关系。这是因为钻井泥浆呈现时间依赖性。这次依赖性是各种活性添加剂之间的直接产物,其各种活性添加剂中构成泥浆和每种添加剂的特征,尤其是在温度和压力效果很大的井下条件下。这些添加剂更常见于尺寸,化学活性,密度和表面能的不同。从这些参数的数据中获取知识,以便在它们之间开发功能关系是一个具有挑战性的任务,需要先进的建模技术以及人类的直觉和体验。对人类直觉和专业泥浆工程师的经验知识的依赖地揭露了传统泥浆设计技术的缺点。已显示人工智能技术来缓解这一挑战。利用石油和天然气业务中人工智能各种应用的丰富文学,讲述了如何以及钻井流体工业中使用的作品,并且选择了由于其使用而取得的成就。本文给出了对现有人工智能技术的综述及其在钻井液工程中的应用。本文还挖掘并分析了每种人工智能技术的优势和陷阱。使用以下美德作为基本标准的审查,以基本标准为基本标准进行的:防止噪声,自组织,泛化能力,数据量要求和收敛速度的鲁棒性。本文提出的人工智能技术包括:人工神经网络(ANNS),模糊逻辑,支持向量机(SVM),混合智能系统(HIS),遗传算法(GA),基于案例的推理(CBR)和粒子群算法(PSA)。还提出了经典人工智能在钻井液工程中的应用概述。从审查中,收集了ANN技术是钻井流体工程核算中最广泛应用于审查的54%以上;虽然失去了循环问题是与钻井液有关的最令人预测的井问题,占预测的泥浆问题的17%以上。还观察到,SI技术的混合优于单独使用的每种AI技术。最后,在上面提到的标准上判断AI技术,发现ANN符合所有列出的标准,除了ANN,GA,SVM和模糊逻辑的速度慢,否则都被发现对抗噪声鲁棒。

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