Vertical Analysis Based on the Fault Data of Running Smart Meter

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Abstract:

As the main tool of electricity measurement and economic settlement, the smart meter directly related to the nation and peoples interests. This paper devises a vertical analysis model of fault data of running smart meter. The model firstly clean the useless data, then do the regress analysis, and get the fault data and changing rate of the fault of each batch, which are utilized to do the cluster to evaluate the stability of the quality of the factory. The method and the result of the model can assess the quality of the batch of the smart meter, and can be beneficial to estimate the quality of factory.

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625-628

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March 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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