Publication | Open Access
Using Machine Learning to Predict Retrofit Effects for a Commercial Building Portfolio
24
Citations
55
References
2021
Year
EngineeringMachine LearningPerformance-based Building DesignEnvironmental Impact AssessmentGreen BuildingBuilding Energy ConservationBuilding TechnologyBuilding DesignSocial SciencesBuilt EnvironmentEnergy RefurbishmentData ScienceEnergy AssessmentFederal BuildingsPredict Retrofit EffectsEnergy ConsumptionPredictive AnalyticsDesignForecastingBuilding EnergyRetrofittingCommercial Building PortfolioArchitectural DesignBuilding PerformanceEnergy ModelingSustainable EnergyEnergy PolicyBuilding Consumption
Buildings account for 40% of the energy consumption and 31% of the CO2 emissions in the United States. Energy retrofits of existing buildings provide an effective means to reduce building consumption and carbon footprints. A key step in retrofit planning is to predict the effect of various potential retrofits on energy consumption. Decision-makers currently look to simulation-based tools for detailed assessments of a large range of retrofit options. However, simulations often require detailed building characteristic inputs, high expertise, and extensive computational power, presenting challenges for considering portfolios of buildings or evaluating large-scale policy proposals. Data-driven methods offer an alternative approach to retrofit analysis that could be more easily applied to portfolio-wide retrofit plans. However, current applications focus heavily on evaluating past retrofits, providing little decision support for future retrofits. This paper uses data from a portfolio of 550 federal buildings and demonstrates a data-driven approach to generalizing the heterogeneous treatment effect of past retrofits to predict future savings potential for assisting retrofit planning. The main findings include the following: (1) There is high variation in the predicted savings across retrofitted buildings, (2) GSALink, a dashboard tool and fault detection system, commissioning, and HVAC investments had the highest average savings among the six actions analyzed; and (3) by targeting high savers, there is a 110–300 billion Btu improvement potential for the portfolio in site energy savings (the equivalent of 12–32% of the portfolio-total site energy consumption).
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