利用人工智能优化钻井成本

Sarah A Akintol
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引用次数: 0

摘要

在石油和天然气行业中,钻井作业占据了大部分的钻井成本,而钻头穿透和钻进地层的速度被称为钻速(ROP)。由于钻井过程中产生的大部分成本与钻井作业有关,因此不仅需要仔细钻井,还需要优化钻井工艺。许多参数都与穿透率有关,这些参数实际上是相互依赖的。这使得预测每个参数的影响变得困难,钻井优化技术最近被用于降低钻井作业成本。优化油气井钻井成本的方法多种多样,其中一些方法包括静态和/或实时优化钻井参数。钻井成本优化的一个潜在领域是通过在井中下入钻头,但由于其对钻井时间和钻头成本的重要性,这一点尤其困难。从这个意义上说,当使用特定的钻头时,由于钻头钻速的降低,随着进尺的增加,它会变得迟钝。钻速的降低增加了总钻进时间。为了优化钻头成本,我们希望通过换钻头策略在两者之间找到一个平衡点。本研究旨在通过使用人工智能来实现钻头程序的最小化钻井时间。本研究使用了尼日利亚尼日尔三角洲地区一口井的数据,并将成本优化建模为马尔可夫决策过程,其中智能体通过强化策略迭代学习来学习更换钻头的最佳时机。这项研究能够实现其目标,因为强化学习优化过程随着时间的推移表现得非常好,因为计算机代理能够找出如何随着时间的推移提高钻井成本。硬件条件越好,训练时间越长,训练效果越好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Drilling Cost Using Artificial Intelligence
Drilling operations in the oil and gas industry takes most of the well cost and how fast the drilling bit penetrate and bore the formation is termed the Rate of penetration (ROP). Since most of the cost incurred during drilling is related to the drilling operations, there is need not only to drill carefully, but also to optimize the drilling process. A lot of parameters are related to the rate of penetration which are actually interdependent on each other. This makes it difficult to predict the influence of every single parameter Drilling optimization techniques have been used recently to reduce drilling operation costs. There are different approaches to optimizing the cost of drilling oil and gas wells, some of which include static and /or real time optimization of drilling parameters. A potential area for optimization of drilling cost is through bit run in the well but this is particularly difficult due to its significance in both drilling time and bit cost. In this sense, as a particular bit gets used, it gets dull as its footage increases, resulting from the reduction in the bit penetration rate. The reduction in penetration rate increases total drill time. In order to optimize bit cost, it is desirable to find a trade-off between the two by a bit change policy This study is aimed at minimizing drilling time by use of artificial intelligent for the bit program. Data obtained from a well in the Niger delta region of Nigeria was used in this study and the cost optimization modelled as a Markov decision process where the intelligent agent was to learn the optimal timings for bit change by reinforcement policy Iteration learning. This study was able to achieve its objectives as the reinforcement learning optimization process performed very well with time as the computer agent was able to figure out how to improve drilling cost over time. Better results could be obtained with a better hardware and increased training time.
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