An Adaptive Data Management Model for Smart Grid

Xu Daqing, Han Yinghua
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引用次数: 4

Abstract

Application of big data techniques in power system will contribute to the sustainable development of power industry companies and the establishment of strong smart grid. There are significant challenges for big data analytics because of heterogeneous data and scalability, system complexity, reliability, and real time requirements for smart grid. In this paper, a data management model is proposed based on knowledge cube, which is an intelligent and adaptive database. The knowledge cube is established based on Topical, Association, Spatial and Temporal. The proposed data management model could handle data that is only relevant to its semantics. And the cube could be combined adaptively with the necessary information about other relevant knowledge cubes by the association component. The proposed knowledge cubes can support the capture and tracking of dynamic data. The proposed model provides a powerful and extensible framework that is particularly well suited to analyzing big variety data in smart grid.
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智能电网的自适应数据管理模型
大数据技术在电力系统中的应用,将有助于电力企业的可持续发展和强智能电网的建设。由于异构数据和可扩展性、系统复杂性、可靠性和智能电网的实时性要求,大数据分析面临着重大挑战。本文提出了一种基于知识立方体的数据管理模型,它是一种智能的自适应数据库。知识立方体是基于主题、关联、空间和时间构建的。所建议的数据管理模型可以处理仅与其语义相关的数据。该多维数据集可以通过关联组件自适应地与其他相关知识多维数据集的必要信息进行组合。所提出的知识多维数据集可以支持动态数据的捕获和跟踪。该模型提供了一个功能强大、可扩展的框架,特别适合于智能电网中海量数据的分析。
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