Publication | Open Access
A comparative analysis of artificial neural network architectures for building energy consumption forecasting
106
Citations
31
References
2019
Year
EngineeringNeural Networks (Machine Learning)Energy EfficiencyGreen BuildingBuilding Energy ConservationSocial SciencesEnergy Consumption ForecastingSystems EngineeringSmart EnergyHidden LayersComparative AnalysisRenewable Energy SystemsElectrical EngineeringOther Forecasting ModelsEnergy ForecastingComputer EngineeringNeural Networks (Computational Neuroscience)ForecastingBuilding EnergyEnergy PredictionIntelligent ForecastingSmart GridsSmart GridEnergy ManagementIntelligent Systems Engineering
Smart grids have recently attracted increasing attention because of their reliability, flexibility, sustainability, and efficiency. A typical smart grid consists of diverse components such as smart meters, energy management systems, energy storage systems, and renewable energy resources. In particular, to make an effective energy management strategy for the energy management system, accurate load forecasting is necessary. Recently, artificial neural network–based load forecasting models with good performance have been proposed. For accurate load forecasting, it is critical to determine effective hyperparameters of neural networks, which is a complex and time-consuming task. Among these parameters, the type of activation function and the number of hidden layers are critical in the performance of neural networks. In this study, we construct diverse artificial neural network–based building electric energy consumption forecasting models using different combinations of the two hyperparameters and compare their performance. Experimental results indicate that neural networks with scaled exponential linear units and five hidden layers exhibit better performance, on average than other forecasting models.
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