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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.

Abstract

Building design optimization often depends on physics-based simulation tools such as EnergyPlus, which, although accurate, are computationally expensive and slow. Surrogate models provide a faster alternative, yet most are location-specific, and even weather-informed variants require simulations from many sites to generalize to unseen locations. This limitation arises because existing methods do not fully exploit the short-term weather-driven energy patterns shared across regions, restricting their scalability and reusability. This study introduces a high-resolution (weekly) weather-informed surrogate modeling approach that enhances model reusability across locations. By capturing recurring short-term weather-energy demand patterns common to multiple regions, the proposed method produces a generalized surrogate that performs well beyond the training location. Unlike previous weather-informed approaches, it does not require extensive simulations from multiple sites to achieve strong generalization. Experimental results show that when trained on a single location, the model maintains high predictive accuracy for other sites within the same climate zone, with no noticeable performance loss, and exhibits only minimal degradation when applied across different climate zones. These findings demonstrate the potential of climate-informed generalization for developing scalable and reusable surrogate models, supporting more sustainable and optimized building design practices.