A predictive approach based on neural network models for building automation systems

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Abstract

In this paper we address the problem of developing a control strategy to reduce the building energy consumption and reach indoor comfort levels. For this multiple and conflicting objectives optimisation we develop an approach based on stochastic feed-forward neural network models with ARIMA model predictions considered as input variables for networks. Studying real data from a sensorised office located in Rovereto (Italy) we develop the approach and achieve results exhibiting the very good performance of this predictive procedure.

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De March, D., Borrotti, M., Sartore, L., Slanz, D., Podesta, L., & Poli, I. (2015). A predictive approach based on neural network models for building automation systems. Smart Innovation, Systems and Technologies, 37, 253–262. https://doi.org/10.1007/978-3-319-18164-6_24

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