Efficient Spatiotemporal Super-Resolution of Urban Microclimates for Heat Wave adaptation
III Jornadas Red URBAN MOME. Madrid, 23 Febrero 2026
Vulnerability map: Climate-Ready BCN
Source: ICLEI Action Fund 2.0
Budget: €1M
Objective: Support citizens and public authorities in adapting to extreme climate events and reducing energy poverty
Implemented: From May 2023 to December 2025
Climate Vulnerability in Barcelona at building level
The Climate Vulnerability Map of Barcelona is a geospatial analysis tool that identifies buildings most at risk during extreme heat events.
It evaluates key performance indicators (KPIs) for buildings and supports climate change planning.
The framework is based on the dimensions defined in the IPCC’s Third Assessment Report: Exposure, Sensitivity, and Adaptive Capacity.
It provides an assessment of all residential buildings in Barcelona(61,000)
What is it?
CVI
The need for high-resolution climate data
Vulnerability index to asses heat wave resilience
Data sources & harmonization
BEEMind: Data ontology
The ontology at the core of our solutions
Applied semantic web technologies:
Massive data integration
Data sources
Big numbers
Massive data integration
61,000
1 Milion
200.000
Buildings
Households
EPC
10,222
3 Milion
20.000
Zones (microcli-mate model)
KPIs visualized
Heat waves warnings and tips
1,050
Households
Modelling
Model Deployment: Triggering Heat Wave Alerts
The Predictive Engine
Weather
UNDynamic Downscaling of Urban Microclimateset + Mamba (Hybrid Spatiotemporal Weather Downscaling)
AI-Driven Spatiotemporal Super-Resolution
Vulnerability map
Mamba Block / Temporal Modeling
Weather
Results
Model Validation during Extreme Events
Case Study: 2017 Summer Heatwaves (AEMET)
Superior Accuracy: The UNet+Mamba architecture outperformed all baselines, achieving a 34% reduction in RMSE compared to standard upscaling.
Structural Preservation: Mamba significantly better preserves complex urban spatial structures (SSIM of 0.815) compared to temporal alternatives like LSTM.
Efficiency vs. Transformers: Standard Transformers exhibited severe training instability and catastrophic divergence (SSIM < 0)
Vulnerability map
Vulnerability map
Case Study: Full-Frame Cooling Deficit Mapping
Vulnerability map
Actionable Intelligence: Night-time Heat Persistence
Vulnerability map
Actionable Intelligence: Night-time Heat Persistence
Revealing Hidden Microclimates: The model successfully detects fine-scale thermal hotspots at the street and block level that are completely invisible to regional models.
Nighttime Heat Persistence (Cooling Deficit): Accurately maps areas where nighttime cooling fails during heatwaves, identifying structural adaptation priorities.
Actionable Intelligence: Provides the precise, high-resolution data required to trigger localized climate alerts and guide tactical urban planning.