Research on Power Quality Evaluation Based on Matter-Element Extension Model

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Abstract:

Based on the matter-element extension model, this paper first builds a set of reasonable power quality evaluation index system, and then determines the index value through the analytical hierarchy process (AHP), and finally makes a comprehensive evaluation of power supply quality. With an example based on, this paper will prove the feasibility of matter-extension model supplied in power quality evaluation.

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2735-2741

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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