High-resolution weather-guided surrogate modeling for data-efficient cross-location building energy prediction
arXiv cs.LG / 3/13/2026
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Key Points
- The paper introduces a high-resolution weekly weather-informed surrogate modeling approach that improves data efficiency for cross-location building energy prediction.
- Training on a single location can generalize to other sites within the same climate zone without noticeable loss, with only minimal degradation across different climate zones.
- The method exploits recurring short-term weather-driven energy patterns shared across regions to enhance reusability and reduce the need for extensive multi-site simulations.
- Experimental results show stronger generalization across climate zones compared to prior weather-informed surrogates, supporting scalable and climate-aware building design practices.
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