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Rock Typing Mapping Methodology Based on Indexed and Probabilistic Self-Organized Map in Shushufindi Field

机译:基于索引和概率自组织地图的岩石键入映射方法

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The Shushufindi field is located in the Oriente basin of Ecuador. The field was discovered in 1972 and widely developed with about 247 wells covering an area of approximately 400 km2. The implementation of lithofacies characterization in 98% of the existing wells has given a reliable description in about 92% of the wells in the current geomodel, which demonstrates, the validity of the deterministic method. A robust petrophysical rock type (PRT) classification can significantly improve the chances of success for all wells, focusing on layered reservoir rocks recognized as the major energy resource in recent years. The vertical and lateral classification of rock heterogeneity in the form of rock types is critical to understand the flow dynamics of the reservoirs. Well logs are the best option for formation evaluation as they provide high vertical resolution measurements. However, rock type's classification using only well logs interpretation techniques, has its limits. In this paper, we introduce a rock type neural network technique based on Indexed and Probabilistic Self-Organized Mapping (IPSOM) which was designed for the geological interpretation of well log data, facies prediction and optimal derivation of petrophysical parameters. The rock typing was based on cored wells in a 3-step approach. Preliminary rock type identification was based on sedimentology description and routine core analysis. In parallel, it was refined with high pressure mercury injection data to describe accurately the porous media. The porosity and permeability ranges were established to elaborate a sand facies classification represented by Petrophysical Rock Type through Winland method. The neural network was first trained on cored reservoirs, and then propagated to uncored wells using the classification model relationship with electrical logs. Finally using the IPSOM classification model, a permeability-porosity relationship for each rock type was obtained, providing input to the dynamic model to predict and validate permeability. This paper present a reservoir characterization enhancement technique using neural network, which has proven its utility in refining the dynamic model of the Shushufindi field and directly contributing to the operator by improving production from layered reservoirs.
机译:Shushufindi油田位于厄瓜多尔的东方盆地。该油田于1972年发现并以约247口井占地约400平方公里的区域广泛开展。岩相特征的在现有的井的98%的实施赋予在当前地质模型,这表明,确定性方法的有效性在孔中的约92%的可靠的描述。一个强大的岩石物理学岩石类型(PRT)的分类可以显著提高成功的所有孔的机会,着眼于近年来公认的主要能源资源的分层储集岩。岩石异质性岩石类型的形式纵向和横向分类关键是要了解该储层的流体动力学。测井是地层评价,因为它们提供高垂直分辨率测试的最佳选择。然而,仅仅使用以及岩石类型的分类记录的解释方法,也有其局限性。在本文中,我们介绍了基于索引和将其设计用于地质解释的测井记录数据,相预测和岩石物理参数的最优推导概率自组织映射(IPSOM)一个岩石类型神经网络技术。岩石类型是基于在3步方法取心井。初步岩石类型识别是基于沉积学的描述和常规岩心分析。平行地,将其用高压汞注入数据细化到准确地描述多孔介质。孔隙度和渗透率范围的建立是为了详细阐述岩石物理学岩石类型通过威兰德方法表示的砂相分类。该神经网络首先训练的芯水库,然后传播到使用电气日志分类模型关系无芯井。最后使用IPSOM分类模型,获得用于每个岩石类型的磁导率孔隙率的关系,提供输入到动态模型来预测和验证渗透性。本文本利用神经网络的贮存表征增强技术,它已证明它的效用在精炼Shushufindi油田的动态模型和通过提高从层状油藏的生产直接有助于操作者。

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