岩性变化对人工智能测井估算总有机碳性能的影响

2区 工程技术 Q1 Earth and Planetary Sciences
Khaled Maroufi , Iman Zahmatkesh
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引用次数: 2

摘要

随着与来源相关的非常规石油资源产量的扩大,通过测井记录准确近似总有机碳(TOC)变得越来越重要。因此,最近的研究主要集中在通过使用不同类型的人工智能技术和/或优化算法来提高TOC估计的精度。在利用这些方法的同时,本研究强调以相同的目标消除从岩性非均质性中继承的未处理的误差源。与有机质量一样,源层段内的岩性变化也会引起测井响应,这可能会干扰人工智能(AI)技术的训练过程。在本研究中,采用自适应神经模糊推理系统(ANFIS)和多层感知器网络(MLP)来评估岩性变化对TOC估计器性能的影响。首先,使用包含不同岩性的数据库(原始模型)构建和训练ANFIS和MLP模型。然后,在对每种岩性的测井数据和TOC值之间的关系进行建模的基础上,开发了一种新的方法(基于岩性的方法)。结果表明,基于岩性的方法估计出更可靠、更准确的TOC值,证明了岩性变化对原始模型的不利影响。此外,基于岩性的ANFIS模型提供了最有希望的结果。由于元启发式算法通常用于优化人工智能技术,遗传算法(GA)和粒子群优化(PSO)也被实现到原始模型(混合模型)中。混合模型估计的TOC值的准确性略高于原始模型得出的TOC值。然而,这些混合方法不如基于岩性的方法有效。通过在伊朗西南部一口井中的Pabdeh烃源岩上执行该方法,保证了所提出方法的适用性。基于其高效性,新开发的岩性方法可以作为可靠评估非常规油气资源以及常规油气资源潜力的有力工具。此外,它可以代替传统的优化方法,从测井数据中近似其他地球化学因素以及岩石物理参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of lithological variations on the performance of artificial intelligence techniques for estimating total organic carbon through well logs

By the expansion of production from source-related unconventional petroleum resources, accurate approximation of Total Organic Carbon (TOC) through well logs has become progressively important. Accordingly, recent studies have mainly focused on increasing the precision of TOC estimation by using different types of AI techniques and/or optimizing algorithms. Along with utilizing these approaches, this study emphasized on removing an unaddressed source of error inherited from lithological heterogeneity with the same goal. Like organic matter quantity, lithological variations within a source interval also induce well log responses, which may interfere with the training process of Artificial Intelligence (AI) techniques. In the present research, the effect of lithological variations on the performance of TOC estimators was evaluated by employing Adaptive Neuro Fuzzy Inference System (ANFIS) and Multilayer Perceptron network (MLP). Firstly, ANFIS and MLP models were constructed and trained using a database containing different lithologies (original models). Then, a new methodology was developed based on modeling the relationship between log data and TOC values for each type of lithology (litho-based method). The result showed that the litho-based method estimates more reliable and accurate TOC values, proving the adverse effect of lithological variations on the original models. Furthermore, the litho-based ANFIS models provide the most promising results. Since metaheuristic algorithms are usually employed to optimize AI techniques, Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) were also implemented into the original models (hybrid models). Accuracy of TOC values estimated by the hybrid models is slightly higher than those derived from the original models. However, these hybrid approaches are not as efficient as the litho-based method. Applicability of the proposed approach was guaranteed by performing it over Pabdeh source rocks in a well of SW Iran. Based on its high efficiency, the newly developed litho-based method can be used as a powerful tool to reliably evaluate unconventional hydrocarbon resources, as well as the potential of the conventional petroleum sources. Moreover, it can be utilized, instead of/along with traditional optimization approaches, to approximate other geochemical factors as well as petrophysical parameters from log data.

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来源期刊
Journal of Petroleum Science and Engineering
Journal of Petroleum Science and Engineering 工程技术-地球科学综合
CiteScore
11.30
自引率
0.00%
发文量
1511
审稿时长
13.5 months
期刊介绍: The objective of the Journal of Petroleum Science and Engineering is to bridge the gap between the engineering, the geology and the science of petroleum and natural gas by publishing explicitly written articles intelligible to scientists and engineers working in any field of petroleum engineering, natural gas engineering and petroleum (natural gas) geology. An attempt is made in all issues to balance the subject matter and to appeal to a broad readership. The Journal of Petroleum Science and Engineering covers the fields of petroleum (and natural gas) exploration, production and flow in its broadest possible sense. Topics include: origin and accumulation of petroleum and natural gas; petroleum geochemistry; reservoir engineering; reservoir simulation; rock mechanics; petrophysics; pore-level phenomena; well logging, testing and evaluation; mathematical modelling; enhanced oil and gas recovery; petroleum geology; compaction/diagenesis; petroleum economics; drilling and drilling fluids; thermodynamics and phase behavior; fluid mechanics; multi-phase flow in porous media; production engineering; formation evaluation; exploration methods; CO2 Sequestration in geological formations/sub-surface; management and development of unconventional resources such as heavy oil and bitumen, tight oil and liquid rich shales.
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