Article ID Journal Published Year Pages File Type
243586 Applied Energy 2012 10 Pages PDF
Abstract

This paper proposes two different types of benchmark models for the comparison of energy performance of water-cooled electric chillers: correlation-based models and Artificial Neural Network (ANN) models. Different techniques are proposed to establish the models and are evaluated with data collected from two chillers installed in an existing central cooling and heating plant. Both chillers have identical capacity and performance characteristics; however, they have quite different operating hours. The results show that models developed in this case study with 7 days of data monitored at the beginning of the summer season provide accurate results over the remaining of the summer and for the following summer. The proposed Multivariable Polynomial (MP) models for chillers provide the most accurate prediction with CV(RMSE) below 7% over the remaining of the summer season, and below 8% for the following summer season.

► The paper presents two different types of benchmark models for electric chillers. ► Techniques are proposed to establish correlation-based and ANN models. ► Accurate results are obtained for models developed with 7 days of monitored data. ► The Multivariable Polynomial (MP) models provide the most accurate prediction. ► The CV(RMSE) are below 7% and 8% over the summer 2009 and 2010, respectively.

Related Topics
Physical Sciences and Engineering Energy Energy Engineering and Power Technology
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