CEApr 2

Conditional Distribution Estimation of Building Characteristics with Diffusion Models for Urban Energy Modeling

arXiv:2511.0293012.2h-index: 11
Predicted impact top 30% in CE · last 90 daysOriginality Synthesis-oriented
AI Analysis

This work addresses data gaps in urban energy modeling for communities, but it is incremental as it applies an existing generative method to a new domain.

The paper tackled the problem of missing detailed building characteristics for urban energy modeling by proposing a conditional diffusion model to generate realistic building attributes, achieving validation through distribution comparison and a case study in Baltimore.

Understanding current energy consumption behavior in communities is critical for informing future energy use decisions and enabling efficient energy management. Urban energy models, which are used to simulate these energy use patterns, require large datasets with detailed building characteristics for accurate outcomes. However, such detailed characteristics at the individual building level are often unknown and costly to acquire, or unavailable. Through this work, we propose using a generative modeling approach to generate realistic building attributes to fill in the data gaps and finally provide complete characteristics as inputs to energy models. Our model learns complex, building-level patterns from training on a large-scale residential building stock model containing 2.2 million buildings. We employ a tabular diffusion-based framework that is designed to handle heterogeneous (discrete and continuous) features in tabular building data, such as occupancy, floor area, heating, cooling, and other equipment details. We develop a capability for conditional diffusion, enabling the imputation of missing building characteristics conditioned on known attributes. We conduct a comprehensive validation of our conditional diffusion model, firstly by comparing the generated conditional distributions against the underlying data distribution, and secondly, by performing a case study for a Baltimore residential region, showing the practical utility of our approach. Our work is one of the first to demonstrate the potential of generative modeling to accelerate building energy modeling workflows.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes