Multi-objective optimization for thermal mass model predictive control in small and medium size commercial buildings under summer weather conditions

Building thermal mass control has great potentials in saving energy consumption and cost. Optimal control schemes are able to utilize passive thermal mass storage to shift the cooling load from peak hours to off-peak hours to reduce energy costs. As such, this paper explores the idea of model predic...

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Bibliographic Details
Published inEnergy (Oxford) Vol. 112; pp. 1194 - 1206
Main Authors Li, Xiwang, Malkawi, Ali
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.10.2016
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Summary:Building thermal mass control has great potentials in saving energy consumption and cost. Optimal control schemes are able to utilize passive thermal mass storage to shift the cooling load from peak hours to off-peak hours to reduce energy costs. As such, this paper explores the idea of model predictive control for building thermal mass control. Specifically, this paper presents a study of developing and evaluating a multi-objective optimization based model predictive control framework for demand response oriented building thermal mass control. This multi-objective optimization framework takes both energy cost and thermal comfort into consideration simultaneously. In this study, the developed model predictive control framework has been applied in six commercial buildings at Boston, Chicago, and Miami, under typical summer weather conditions. Time-of-use electricity prices from these three locations are used to calculate the cooling and reheating energy costs. Pareto curves for optimal temperature setpoints under different thermal comfort requirements are calculated to show the trade-off between the cost saving and thermal comfort maintaining. Comparing with a typical “night setback” operation scheme, this model predictive control schemes are able to save energy costs from 20% to 60% at these three locations under different weather and energy pricing conditions. In addition, the Pareto curves also show that the energy cost saving potentials are highly dependent on the thermal comfort requirements, weather conditions, utility rate structures, and the building constructions. •Developed a multi-objective predictive control for building thermal mass control.•Applied this predictive control framework under summer conditions at three cities.•Evaluated the proposed optimal control schemes against a heuristic baseline scheme.•Calculated the Pareto curves for optimal schemes with different weighting factors.
ISSN:0360-5442
DOI:10.1016/j.energy.2016.07.021