This project develops a deep learning framework to predict Urban Heat Island Intensity (UHII) in Pune, India, using a multi-stream convolutional neural network (CNN) with attention-based fusion. By integrating three geospatial data modalities—Land Surface Temperature (LST), PM₂.₅ particulate matter, and high-resolution land-cover maps—our model achieves a Mean Squared Error (MSE) of 0.1104 on held-out test data, outperforming baseline models (MSE=0.185). The framework leverages Google Earth Engine (GEE) for scalable data processing and provides interpretable attention maps to guide urban planning and climate resilience strategies.
- Multi-Modal Inputs: Processes Terra MODIS LST (MOD11A2), GLC_FCS30D land-cover, and satellite-derived PM₂.₅ datasets.
- Model Architecture: Coordinated encoders with CoordConv and CBAM attention, fused via an Attention U-Net for end-to-end UHII prediction.
- Humanitarian Impact: Identifies heat risk drivers (e.g., impervious surfaces, pollution) to inform urban greening and emission control policies.
- Interactive Pipeline: Jupyter notebook with widgets for temporal (2003–2020) and seasonal data exploration.
- Sources:
- MOD11A2 LST: 8-day, 1 km resolution [NASA LP DAAC, 2025].
- GLC_FCS30D Land Cover: Annual, 30 m resolution, 2000–2022 [GEE Community Catalog, 2025].
- PM₂.₅: Monthly, 0.01° resolution [GEE Community Catalog, 2025].
- UHII Labels: Derived from urban-rural LST differences [GEE Community Catalog, 2025].
- Preprocessing:
- Clipped to Pune’s administrative boundary.
- Resampled to 1 km grid for alignment.
- Split: 80% train, 10% validation, 10% test.
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Coordinated Encoders:
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Attention U-Net as Feature Fusion Mechanism:
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Training Details: MSE loss, Adam optimizer, CosineAnnealingLR scheduler, trained over 2003–2020 data.
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Quantitative:
- Test MSE: 0.1104 (vs. baseline UNet: 0.185).
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Qualitative:
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Interpretability:
- CBAM attention emphasizes pollution-heat synergies, with blue streaks in attention masks indicating high-influence regions (e.g., urban centers).
- Identifies UHI drivers (impervious surfaces, PM₂.₅) to guide urban greening, zoning, and emission policies.
- Supports equitable interventions in Pune, where 2024 data show heat stress in low-income areas, potentially reducing ~15% of heat-related vulnerabilities.
If you use this work, please cite:
Patil, A., Kalani, P., Lolage, O., Lanjewar, N. (2025). Learning Urban Heat Signatures via Coordinated Multi-Stream Convolution and Attention-Based Fusion. Vishwakarma Institute of Technology.



