基于有限井数据的人工神经网络在岩相确定中的应用

Ana Brcković, Monika Kovačević, M. Cvetkovic, Iva Kolenković Močilac, D. Rukavina, B. Saftić
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引用次数: 10

摘要

无论储层或盆地层面的规模如何,地下岩相定义都是建模的重要因素。在勘探水平较低的地区,岩相分布建模是一项复杂的任务,因为可用的输入很少。为此,选择了波热加山谷的一个案例研究,在大约850平方公里的区域内,只有一口现有的井和几个地震剖面。为了扩展岩相建模的输入数据集,进行了神经网络分析,将单井中的解释岩相(砂岩、粉砂岩、泥灰岩和角砾岩)和从地震剖面收集的属性数据结合起来。三种不同类型的神经网络用于分析:多层感知器、径向基函数和概率神经网络。因此,根据从神经网络获得的预测,在地震剖面旁边建立了三个岩相模型。三种岩相是成功的。。。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of artificial neural networks for lithofacies determination based on limited well data
Lithofacies definition in the subsurface is an important factor in modeling, regardless of the scale being at reservoir or basin level. In areas with low exploration level, modeling of lithofacies distribution presents a complicated task as very few inputs are available. For this purpose, a case study in the Požega Valley was selected with only one existing well and several seismic sections within an area covering roughly 850 km2. For the task of expanding the input data set for lithofacies modeling, neural network analysis was performed that incorporated interpreted lithofacies (sandstone, siltite, marl, and breccia-conglomerate) in a single well and attribute data gathered from a seismic section. Three types of different neural networks were used for the analysis: multilayer perceptron, radial-basis function, and probabilistic neural network. As a result, three lithofacies models were built alongside a seismic section based upon predictions acquired from the neural networks. Three lithofacies were succe...
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来源期刊
Central European Geology
Central European Geology Earth and Planetary Sciences-Geology
CiteScore
1.40
自引率
0.00%
发文量
8
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