Baseline Load Models of Air-Conditioning in Commercial Buildings Considering Temperature and Seasons

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Abstract:

Accurate prediction of air-conditioning load is the prerequisite of commercial buildings actively participating in the operation of power grid. The strong correlation factors with air-conditioning load were analyzed in commercial building based on the empirical results, and a temperature sensitivity model of air-conditioning load was got. Considering the humidity, air-pressure and other seasonal difference, a correction sensitivity model with temperature and seasons is proposed. Finally the effectiveness of this model is validated by the calculation example of Shanghai Huitai Building.

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1729-1734

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October 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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