Advanced analytics for harnessing the power of smart meter big data

作者: Damminda Alahakoon , Xinghuo Yu

DOI: 10.1109/IWIES.2013.6698559

关键词:

摘要: Smart meters or advanced metering infrastructure (AMI) are being deployed in many countries around the world. basic building block of smart grid and governments have invested vast amounts meter deployment targeting wide economic, social environmental benefits. The key functionality is capture transfer data relating to consumption (electricity, gas) events such as power quality status. Such capability has also resulted generation an unprecedented volume, speed collection complexity, which so called big challenge. To realize hidden value data, it important use appropriate tools technology currently analytics. In this paper we define a landscape discuss different technologies available for harnessing captured data. Main limitations challenges with existing techniques highlighted several future directions presented.

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