Edge-based Parametric Digital Twins for Intelligent Building Indoor Climate Modeling
Paper in proceeding, 2024

Digital transformation in the built environment generates vast data for developing data-driven models to optimize building operations. This study presents an integrated solution utilizing edge computing, digital twins, and deep learning to enhance the understanding of climate in buildings. Parametric digital twins, created using an ontology, ensure consistent data representation across diverse service systems equipped by different buildings. Based on created digital twins and collected data, deep learning methods are employed to develop predictive models for identifying patterns in indoor climate and providing insights. Both the parametric digital twin and deep learning models are deployed on edge for low latency and privacy compliance. As a demonstration, a case study was conducted in a historic building in Östergötland, Sweden, to compare the performance of five deep learning architectures. The results indicate that the timeseries dense encoder model exhibited strong competitiveness in performing multi-horizon forecasts of indoor temperature and relative humidity with low computational costs.

Author

Zhongjun Ni

Linköping University

Chi Zhang

Software Engineering 2

Magnus Karlsson

Linköping University

Shaofang Gong

Linköping University

IEEE International Workshop on Factory Communication Systems - Proceedings, WFCS

28358511 (ISSN)


979-835031934-7 (ISBN)

20th IEEE International Conference on Factory Communication Systems, WFCS 2024
Toulouse, France,

Subject Categories (SSIF 2025)

Computer Sciences

Building Technologies

Computer Systems

DOI

10.1109/WFCS60972.2024.10540966

More information

Latest update

6/25/2025