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Enhancing Indoor Temperature Forecasting through Synthetic Data in Low-Data Environments

Engineering and Technology

Enhancing Indoor Temperature Forecasting through Synthetic Data in Low-Data Environments

Z. Thiry, M. Ruocco, et al.

This exciting research by Zachari Thiry, Massimiliano Ruocco, Alessandro Nocente, and Michail Spitieris dives into the innovative use of synthetic data to enhance indoor temperature forecasting for HVAC systems. By harnessing advanced AI techniques like GANs and VAEs, the study shows remarkable improvements in forecasting accuracy, even in data-scarce environments.

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Playback language: English
Abstract
Forecasting indoor temperatures is crucial for efficient HVAC system control. Data scarcity is a major challenge, as acquiring data representing extreme scenarios and transient regimes is costly and energy-intensive. This paper investigates the use of synthetic data augmentation, specifically leveraging state-of-the-art AI methods like GANs and VAEs, to improve forecasting models in low-data environments. The study evaluates the performance of synthetic data generators independently and assesses their utility in improving forecasting accuracy and mitigating training variance. Results demonstrate significant improvements in forecasting accuracy by integrating synthetic data, paving the way for more robust models in low-data regimes.
Publisher
Published On
Authors
Zachari Thiry, Massimiliano Ruocco, Alessandro Nocente, Michail Spitieris
Tags
HVAC
temperature forecasting
synthetic data
GANs
VAEs
data augmentation
machine learning
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