Time Series Forecast of Cooling Demand for Sustainable Chiller System in an Office Building in a Subtropical Climate

Author:

Yu Fu-Wing1,Ho Wai-Tung1

Affiliation:

1. School of Professional Education and Executive Development, The Hong Kong Polytechnic University, Hong Kong, China

Abstract

Commercial buildings can take up one-third of the energy related carbon emissions. There is limited research on forecasting cooling demands to evaluate sustainable air conditioning systems under climate change. This paper develops a simplified cooling demand model based on the time series of climatic and architectural variables to analyze carbon reduction by a sustainable chiller system. EnergyPlus is used to simulate hourly cooling demands of a hypothesized high-rise office building in Hong Kong under a change of architectural parameters and future climate conditions. An hourly cooling demand model with R2 above 0.9 is developed with inputs of the window-to-wall ratio, outdoor air enthalpy, global solar radiation, wind speed and their two steps ahead. The validated model is then used to analyze carbon reduction potentials by free cooling and a full variable speed chiller system. The low carbon technologies reduce carbon emissions by over 20% with but the reduction shrinks to 2.51–4.93% under future climate conditions. The novelty of this study is the simplified cooling demand model based on the time series of climatic and architectural variables. The significances of this study are to quantify carbon reduction by a sustainable chiller system under climate change and to appeal for more carbon reduction technologies for carbon neutrality.

Funder

Faculty Development Scheme of Research Grants Council, HKSAR

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

Reference39 articles.

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2. Wan, S., Ding, G., Runeson, G., and Liu, Y. (2022). Sustainable Buildings’ Energy-Efficient retrofitting: A study of large office buildings in Beijing. Sustainability, 14.

3. Research on systematic analysis and optimization method for chillers based on model predictive control: A case study;Deng;Energy Build.,2023

4. U.S. Department of Energy (2023, March 20). EnergyPlus Version 22.1.0. Available online: https://energyplus.net/.

5. University of Wisconsin (2023, March 20). TRNSYS, Transient System Simulation Tool. Available online: https://sel.me.wisc.edu/trnsys/.

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