Sensors (Nov 2023)

Small Sample Building Energy Consumption Prediction Using Contrastive Transformer Networks

  • Wenxian Ji,
  • Zeyu Cao,
  • Xiaorun Li

DOI
https://doi.org/10.3390/s23229270
Journal volume & issue
Vol. 23, no. 22
p. 9270

Abstract

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Predicting energy consumption in large exposition centers presents a significant challenge, primarily due to the limited datasets and fluctuating electricity usage patterns. This study introduces a cutting-edge algorithm, the contrastive transformer network (CTN), to address these issues. By leveraging self-supervised learning, the CTN employs contrastive learning techniques across both temporal and contextual dimensions. Its transformer-based architecture, tailored for efficient feature extraction, allows the CTN to excel in predicting energy consumption in expansive structures, especially when data samples are scarce. Rigorous experiments on a proprietary dataset underscore the potency of the CTN in this domain.

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