Enhancing Indoor Temperature Forecasting through Synthetic Data in Low-Data Environments
Zachari Thiry, Massimiliano Ruocco, Alessandro Nocente, Michail, Spitieris

TL;DR
This paper explores the use of AI-generated synthetic data to improve indoor temperature forecasting in low-data environments, demonstrating significant accuracy gains and robustness enhancements.
Contribution
It introduces novel fusion strategies of real and synthetic data for indoor temperature prediction, addressing data scarcity issues with state-of-the-art AI methods.
Findings
Synthetic data improves forecasting accuracy.
Fusion of real and synthetic data reduces training variance.
Synthetic data helps address dataset imbalance.
Abstract
Forecasting indoor temperatures is important to achieve efficient control of HVAC systems. In this task, the limited data availability presents a challenge as most of the available data is acquired during standard operation where extreme scenarios and transitory regimes such as major temperature increases or decreases are de-facto excluded. Acquisition of such data requires significant energy consumption and a dedicated facility, hindering the quantity and diversity of available data. Cost related constraints however do not allow for continuous year-around acquisition. To address this, we investigate the efficacy of data augmentation techniques leveraging SoTA AI-based methods for synthetic data generation. Inspired by practical and experimental motivations, we explore fusion strategies of real and synthetic data to improve forecasting models. This approach alleviates the need for…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Neural Networks and Applications · Building Energy and Comfort Optimization
