4.7 Article

An IoT-Based Thermal Modelling of Dwelling Rooms to Enable Flexible Energy Management

Journal

IEEE TRANSACTIONS ON SMART GRID
Volume 14, Issue 5, Pages 3550-3560

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSG.2023.3235809

Keywords

Heating systems; Temperature measurement; Computational modeling; Atmospheric modeling; Data models; Zigbee; Representation learning; Thermal model; machine learning; edge computing; data dependency

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This paper proposes a dark-grey box method for dwelling thermal modelling, based on an edge computing system. The method achieves high accuracy by integrating time-varying features and utilizing both physical and machine-learning models.
The thermal model of dwellings is the basis for flexible energy management of smart homes, where heating load is a big part of demand. It can also be operated as virtual energy storage to enable flexibility. However, constrained by data measurements and learning methods, the accuracy of existing thermal models is unsatisfying due to time-varying disturbances. This paper, based on the edge computing system, develops a dark-grey box method for dwelling thermal modelling. This dark-grey box method has high accuracy for: i) containing a thermal model integrated with time-varying features, and ii) utilising both physical and machine-learning models to learn the thermal features of dwellings. The proposed modelling method is demonstrated on a real room, enabled by an Internet of Things (IoT) platform. Results illustrate its feasibility and accuracy, and also reveal the data-size dependency of different feature-learning methods, providing valuable insights in selecting appropriate feature-learning methods in practice. This work provides more accurate thermal modelling, thus enabling more efficient energy use and management and helping reduce energy bills.

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