Generating Occupancy Profiles for Building Simulations Using a Hybrid GNN and LSTM Framework



Xie, Yuan and Stravoravdis, Spyridon ORCID: 0000-0001-6122-8701
(2023) Generating Occupancy Profiles for Building Simulations Using a Hybrid GNN and LSTM Framework. ENERGIES, 16 (12). p. 4638.

[img] PDF
energies-16-04638 (1).pdf - Open Access published version

Download (9MB) | Preview

Abstract

<jats:p>Building occupancy profiles are critical in thermal and energy simulations. However, determining an accurate occupancy profile is difficult due to its stochastic nature. In most simulations, the occupant activities are usually represented by fixed yearly schedules, which are often derived from guides and other similar sources and may not represent the simulated building accurately. Therefore, an inaccuracy in defining occupancy profiles can be a source of error in building simulations. Over the past few years machine learning has become very popular due to its ability to reveal hidden patterns and relationships between data and this makes it suitable for investigating patterns in occupancy data. This study proposes a novel hybrid model combining the Graph Neural Network and the Long Short-term Memory neural network (LSTM) to predict the occupancy of individual rooms on a typical office floor. The proposed Graph LSTM model can produce high-resolution occupancy profiles of an office that are in good agreement with the reference occupancy profiles of the same office. The reference occupancy profiles for this office were derived from an agent-based model using AnyLogic and were not used in the training of the neural network. The proposed Graph LSTM model outperformed other neural networks tested such as the Recurrent Neural Network (RNN), the Gated Recurrent Unit (GRU) and LSTM. When Graph LSTM is compared to the other neural networks tested, there is a range of improvement between 13.5 and 14.6% in the index of agreement, 38.3 and 46.8% in mean absolute error and 34.4 and 40.0% in root mean square error, when averaging the differences over the whole office.</jats:p>

Item Type: Article
Uncontrolled Keywords: energy simulation, GNN, GRU, LSTM, neural networks, occupancy, RNN
Divisions: Faculty of Humanities and Social Sciences > School of the Arts
Depositing User: Symplectic Admin
Date Deposited: 25 Sep 2023 08:10
Last Modified: 15 Mar 2024 15:05
DOI: 10.3390/en16124638
Related URLs:
URI: https://livrepository.liverpool.ac.uk/id/eprint/3173005