Jin Yang, Hugues Rivard and Radu Zmeureanu
Year:
2005
Bibliographic info:
Building Simulation, 2005, Montreal, Canada, 8 p

While most of the existing artificial neural networks (ANN) models for building energy prediction are static in nature, this paper evaluates the performance of adaptive ANN models that are capable of adapting themselves to unexpected pattern changes in the incoming data, and therefore can be used for the realtime on-line building energy prediction. Two adaptive ANN models are proposed and tested:accumulative training and sliding window training. The computational experiments presented in the paper use both simulated (synthetic) data and measured data.