Publication | Open Access
Estimating the Energy Savings of Energy Efficiency Actions with Ensemble Machine Learning Models
44
Citations
44
References
2023
Year
EngineeringMachine LearningEnergy Efficiency ActionsEnergy EfficiencyMachine Learning ToolEnergy ConservationGreen BuildingEnergy PerformanceEnsemble MethodsEnergy SavingsData ScienceEnergy OptimizationEnergy ConsumptionPredictive AnalyticsEnergy ForecastingEnergy Efficiency FinancingForecastingEnergyEnergy PredictionEnergy ManagementEnergy TransitionEnergy PolicyEnsemble ModelEnsemble Algorithm
Energy efficiency financing is considered among the top priorities in the energy sector among several stakeholders. In this context, accurately estimating the energy savings achieved by energy efficiency actions before being approved and implemented is of major importance to ensure the optimal allocation of the available financial resources. This study aims to provide a machine-learningbased methodological framework for a priori predicting the energy savings of energy efficiency renovation actions. The proposed solution consists of three tree-based algorithms that exploit bagging and boosting as well as an additional ensembling level that further mitigates prediction uncertainty. The proposed models are empirically evaluated using a database of various, diverse energy efficiency renovation investments. Results indicate that the ensemble model outperforms the three individual models in terms of forecasting accuracy. Also, the generated predictions are relatively accurate for all the examined project categories, a finding that supports the robustness of the proposed approach.
| Year | Citations | |
|---|---|---|
Page 1
Page 1