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Big-data integration methodologies for effective management and data mining of petroleum digital ecosystems

机译:用于石油数字生态系统的有效管理和数据挖掘的大数据集成方法

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摘要

Petroleum industries' big data characterize heterogeneity and they are often multidimensional in nature. In the recent past, explorers narrate petroleum system, as an ecosystem, in which elements and processes are constantly interacted and communicated each other. Exploration is one of the key super-type data dimensions of petroleum ecosystem, (including seismic dimension), exhibiting high degree of heterogeneity, sequence identity and structural similarity; this is especially the case for, elements and processes that are unique to petroleum systems of South East Asia. Existing approaches of petroleum data organizations have limitations in capturing and integrating petroleum systems data. An alternative method uses ontologies and does not rely on keywords or similarity metrics. The conceptual framework of petroleum ontology (PO) is to promote reuse of concepts and a set of algebraic operators for querying petroleum ontology instances. This ontology-based fine-grained multidimensional data structuring adapts to warehouse metadata modeling. The data integration process facilitates to metadata models, which are deduced for Indonesian sedimentary basins, and is useful for data mining and subsequent data interpretation including geological knowledge mapping.
机译:石油行业的大数据具有异质性,而且通常具有多维性质。在最近的历史中,探险家将石油系统描述为一个生态系统,在该系统中,要素和过程之间不断相互作用和交流。勘探是石油生态系统的关键超类型数据维度之一(包括地震维度),具有高度的异质性,序列同一性和结构相似性;东南亚石油系统特有的元素和过程尤其如此。石油数据组织的现有方法在捕获和集成石油系统数据方面存在局限性。一种替代方法使用本体,并且不依赖于关键字或相似性度量。石油本体(PO)的概念框架旨在促进概念的重用以及一组用于查询石油本体实例的代数运算符。这种基于本体的细粒度多维数据结构适用于仓库元数据建模。数据集成过程有助于为印度尼西亚沉积盆地推导的元数据模型,对于数据挖掘和后续数据解释(包括地质知识制图)很有用。

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