Extreme Learning Machine combined with a Differential Evolution algorithm for lithology identification

C. M. Saporetti, G. R. Duarte, Tales L. Fonseca, L. G. Fonseca, E. Pereira
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引用次数: 19

Abstract

Lithology identification, obtained through the analysis of several geophysical properties, has an important role in the process of characterization of oil reservoirs. The identification can be accomplished by direct and indirect methods, but these methods are not always feasible because of the cost or imprecision of the results generated. Consequently, there is a need to automate the procedure of reservoir characterization and, in this context, computational intelligence techniques appear as an alternative to lithology identification. However, to acquire proper performance, usually some parameters should be adjusted and this can become a hard task depending on the complexity of the underlying problem. This paper aims to apply an Extreme Learning Machine (ELM) adjusted with a Differential Evolution (DE) to classify data from the South Provence Basin, using a previously published paper as a baseline reference. The paper contributions include the use of an evolutionary algorithm as a tool for search on the hyperparameters of the ELM. In addition, an  activation function recently proposed in the literature is implemented and tested. The  computational approach developed here has the potential to assist in petrographic data classification and helps to improve the process of reservoir characterization and the production development planning.
结合差分进化算法的极限学习机岩性识别
岩性识别是通过对几种地球物理性质的分析得到的,在油藏表征过程中具有重要作用。鉴定可以通过直接和间接的方法来完成,但由于成本或产生的结果不精确,这些方法并不总是可行的。因此,有必要将储层表征过程自动化,在这种情况下,计算智能技术作为岩性识别的替代方案出现。然而,为了获得适当的性能,通常需要调整一些参数,根据潜在问题的复杂性,这可能成为一项艰巨的任务。本文的目的是应用一个极端学习机(ELM)调整差分进化(DE)来分类来自南普罗旺斯盆地的数据,使用先前发表的论文作为基准参考。论文的贡献包括使用进化算法作为搜索ELM超参数的工具。此外,本文还实现并测试了最近在文献中提出的一个激活函数。本文开发的计算方法有可能有助于岩石学数据分类,并有助于改进储层表征过程和生产开发规划。
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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