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Learning based compact thermal modeling for energy-efficient smart building management

Publication ,  Conference
Zhao, H; Quach, D; Wang, S; Wang, H; Chen, H; Li, X; Tan, SXD
Published in: 2015 IEEE ACM International Conference on Computer Aided Design Iccad 2015
January 5, 2016

In this article, we propose a new behavioral thermal modeling method for fast building performance analysis, which is critical for energy-efficient smart building control and management. The new approach is based on two recurrent neutral network architecture to obtain the compact nonlinear thermal models for complicated building. We start with a more realistic building simulation program, EnergyPlus, from Department of Energy, to model some practical buildings such as office buildings and data centers. EnergyPlus can model the various time-series inputs to a building such as ambient temperature, heating, ventilation, and air-conditioning (HVAC) inputs, power consumption of electronic equipment, lighting and number of occupants in a room sampled in each hour and produce resulting temperature traces of zones (rooms). In this work, we apply two recurrent neural network (RNN) architectures to build the non-linear compact thermal model of the building: one is non-linear state-space RNN architecture (NLSS), which has global feedbacks, and the other one is Elman's RNN architecture (ELNN), which has local feedbacks in each layer. We give a simple formula to calculate the RNN layer number, layer size to configure RNN architecture to avoid overfitting and underfitting problems. A cross-validation based training technique is further applied to improve predictable accuracy of models. Experimental results from a case study of three buildings show that ELNN and NLSS can both build very accurate building thermal models for the 2-zone and 5-zone building cases: both of them have average errors from around 1% to 1.5% for the two buildings. For the more complex 6-zone building case, ELNN outperforms NLSS with maximum errors 16% against 23%. But both methods have 2.2% average errors.

Duke Scholars

Published In

2015 IEEE ACM International Conference on Computer Aided Design Iccad 2015

DOI

Publication Date

January 5, 2016

Start / End Page

450 / 456
 

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Zhao, H., Quach, D., Wang, S., Wang, H., Chen, H., Li, X., & Tan, S. X. D. (2016). Learning based compact thermal modeling for energy-efficient smart building management. In 2015 IEEE ACM International Conference on Computer Aided Design Iccad 2015 (pp. 450–456). https://doi.org/10.1109/ICCAD.2015.7372604
Zhao, H., D. Quach, S. Wang, H. Wang, H. Chen, X. Li, and S. X. D. Tan. “Learning based compact thermal modeling for energy-efficient smart building management.” In 2015 IEEE ACM International Conference on Computer Aided Design Iccad 2015, 450–56, 2016. https://doi.org/10.1109/ICCAD.2015.7372604.
Zhao H, Quach D, Wang S, Wang H, Chen H, Li X, et al. Learning based compact thermal modeling for energy-efficient smart building management. In: 2015 IEEE ACM International Conference on Computer Aided Design Iccad 2015. 2016. p. 450–6.
Zhao, H., et al. “Learning based compact thermal modeling for energy-efficient smart building management.” 2015 IEEE ACM International Conference on Computer Aided Design Iccad 2015, 2016, pp. 450–56. Scopus, doi:10.1109/ICCAD.2015.7372604.
Zhao H, Quach D, Wang S, Wang H, Chen H, Li X, Tan SXD. Learning based compact thermal modeling for energy-efficient smart building management. 2015 IEEE ACM International Conference on Computer Aided Design Iccad 2015. 2016. p. 450–456.

Published In

2015 IEEE ACM International Conference on Computer Aided Design Iccad 2015

DOI

Publication Date

January 5, 2016

Start / End Page

450 / 456