The benefits and dangers of using artificial intelligence in petrophysics

Steve Cuddy
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Abstract

Artificial Intelligence, or AI, is a method of data analysis that learns from data, identify patterns and makes predictions with the minimal human intervention. AI is bringing many benefits to petrophysical evaluation. Using case studies, this paper describes several successful applications. The future of AI has even more potential. However, if used carelessly there are potentially grave consequences.

A complex Middle East Carbonate field needed a bespoke shaly water saturation equation. AI was used to ‘evolve’ an ideal equation, together with field specific saturation and cementation exponents. One UKCS gas field had an ‘oil problem’. Here, AI was used to unlock the hidden fluid information in the NMR T1 and T2 spectra and successfully differentiate oil and gas zones in real time. A North Sea field with 30 wells had shear velocity data (Vs) in only 4 wells. Vs was required for reservoir modelling and well bore stability prediction. AI was used to predict Vs in all 30 wells. Incorporating high vertical resolution data, the Vs predictions were even better than the recorded logs.

As it is not economic to take core data on every well, AI is used to discover the relationships between logs, core, litho-facies and permeability in multi-dimensional data space. As a consequence, all wells in a field were populated with these data to build a robust reservoir model. In addition, the AI predicted data upscaled correctly unlike many conventional techniques. AI gives impressive results when automatically log quality controlling (LQC) and repairing electrical logs for bad hole and sections of missing data.

AI doesn’t require prior knowledge of the petrophysical response equations and is self-calibrating. There are no parameters to pick or cross-plots to make. There is very little user intervention and AI avoids the problem of ‘garbage in, garbage out’ (GIGO), by ignoring noise and outliers. AI programs work with an unlimited number of electrical logs, core and gas chromatography data; and don’t ‘fall-over’ if some of those inputs are missing.

AI programs currently being developed include ones where their machine code evolves using similar rules used by life’s DNA code. These AI programs pose considerable dangers far beyond the oil industry as described in this paper. A ‘risk assessment’ is essential on all AI programs so that all hazards and risk factors, that could cause harm, are identified and mitigated.

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在岩石物理学中使用人工智能的好处和危险
人工智能(Artificial Intelligence,简称AI)是一种数据分析方法,可以从数据中学习,识别模式,并在最少的人为干预下做出预测。人工智能为岩石物理评价带来了许多好处。通过案例分析,本文描述了几个成功的应用。人工智能的未来有更大的潜力。然而,如果不小心使用,可能会造成严重后果。一个复杂的中东碳酸盐岩油田需要一个定制的页岩水饱和度方程。人工智能被用来“进化”一个理想方程,连同特定油田的饱和度和胶结指数。英国石油公司的一个天然气田出现了“石油问题”。在这里,利用人工智能解锁了核磁共振T1和T2光谱中隐藏的流体信息,并成功实时区分了油气层。北海油田有30口井,只有4口井的剪切速度数据(v)。储层建模和井筒稳定性预测都需要v。人工智能用于预测所有30口井的v值。结合高垂直分辨率数据,v预测甚至比记录的测井数据更好。由于对每口井采集岩心数据并不经济,因此采用人工智能技术在多维数据空间中发现测井曲线、岩心、岩相和渗透率之间的关系。因此,该油田的所有井都使用这些数据进行填充,以建立稳健的储层模型。此外,与许多传统技术不同,人工智能预测数据的准确性更高。人工智能在自动测井质量控制(LQC)和修复坏井和缺失数据部分的电气测井时取得了令人印象深刻的结果。人工智能不需要事先了解岩石物理响应方程,并且可以自我校准。没有参数可以选择,也没有交叉图可以绘制。很少有用户干预,人工智能通过忽略噪音和异常值来避免“垃圾输入,垃圾输出”(GIGO)问题。人工智能程序可以处理无限数量的电测井、岩心和气相色谱数据;如果其中一些输入缺失,不要“摔倒”。目前正在开发的人工智能程序包括它们的机器代码使用与生命DNA代码相似的规则进化的程序。这些人工智能程序带来的危险远远超出了本文所述的石油行业。“风险评估”对所有人工智能项目都至关重要,这样才能识别和减轻可能造成伤害的所有危害和风险因素。
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