4.7 Article

Evaluation of cooling setpoint setback savings in commercial buildings using electricity and exterior temperature time series data

Journal

ENERGY
Volume 233, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.energy.2021.121117

Keywords

Building energy; HVAC; Commercial buildings; Data analytics; Setpoint setback; Random forest; Time series

Funding

  1. Advanced Research Projects AgencyEnergy (ARPAE), U.S. Department of Energy [DE-AR-000 0668]
  2. Ohio Third Frontier at Case Western Reserve University [Tech 11060, Tech 12004]

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This study proposed a new data-driven approach to evaluate HVAC cooling systems in commercial buildings and identify savings opportunities. Retail and office buildings demonstrate the highest potential for savings, and the number of cooling degree days and base to peak ratio were identified as the most important variables for predicting cooling system consumption.
Commercial buildings account for a significant amount of total energy produced in the US, and the Heating Ventilation and Cooling (HVAC) systems are one of the most significant components of their overall consumption. In this study, we proposed a new data-driven approach to evaluate HVAC cooling systems in commercial buildings and identify savings opportunities. The focus is an investigation of the impact of thermostat setpoint setback but using only whole building, electricity data taken at 15-min intervals for the analysis. We conducted a comparative study of setpoint setback characteristics on 432 commercial buildings with 5 building usage types across the United States. To accomplish this, both piecewise and Random Forest regression algorithms were employed using electricity and exterior temperature datasets to identify operational characteristics and the effective setpoints in the building to determine the corresponding savings opportunities. Both occupied and unoccupied time periods were studied across cooling degree days (CDD), when air conditioning is typically operational. The results show that in commercial buildings, on average, cooling systems account for 9.5% of total consumption. When a one degree setback during the cooling season is applied, an average of approximately 1.1% of annual consumption is achieved; retail and office buildings demonstrate the highest potential for savings. Additionally, we identified that the number of cooling degree days and base to peak ratio (BPR) are the most important variables for predicting the magnitude of the consumption of cooling systems. (c) 2021 Elsevier Ltd. All rights reserved.

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