LSTM-based indoor air temperature prediction framework for HVAC systems in smart buildings

Resource type
Journal Article
Authors/contributors
Title
LSTM-based indoor air temperature prediction framework for HVAC systems in smart buildings
Abstract
Accurate indoor air temperature (IAT) predictions for heating, ventilation, and air conditioning (HVAC) systems are challenging, especially for multi-zone building and for different HVAC system types. Moreover, the nonlinearity of the buildings thermal dynamics makes the IAT prediction more difficult since it is affected by complex factors such as controlled and uncontrolled points, outside weather conditions and occupancy schedule. This paper presents a long short-term memory (LSTM) model to predict IAT for multi-zone building based on direct multi-step prediction with sequence-to-sequence approach. Two strategies, LSTM-MISO and LSTM-MIMO, are built for multi-input single-output and multi-input multi-output, respectively. The performance of these two strategies has been evaluated based on two case studies on real smart buildings using variable air volume (VAV) and constant air volume (CAV) systems. For both buildings, experimental results showed that the LSTM models outperform multilayer perceptron models by reducing the prediction error by 50%.
Publication
Neural Computing and Applications
Volume
32
Issue
23
Pages
17569-17585
Date
2020-12-01
Journal Abbr
Neural Computing and Applications
ISSN
1433-3058
Library Catalogue
ResearchGate
Call Number
openalex:W3021449555
Extra
openalex: W3021449555
Citation
Mtibaa, F., Nguyen, K.-K., Azam, M., Papachristou, A., Venne, J.-S., & Cheriet, M. (2020). LSTM-based indoor air temperature prediction framework for HVAC systems in smart buildings. Neural Computing and Applications, 32(23), 17569–17585. https://doi.org/10.1007/s00521-020-04926-3