A Multi-Agent System for Building-Age Cohort Mapping to Support Urban Energy Planning
arXiv cs.CV / 3/19/2026
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Key Points
- The paper proposes a multi-agent LLM system with three agents (Zensus, OSM, Monument) to fuse data from heterogeneous sources for building-age mapping to support urban energy planning.
- A data orchestrator and harmonizer geocodes and deduplicates building imprints to produce a fused ground truth used for downstream analysis.
- It introduces BuildingAgeCNN, a satellite-only classifier based on a ConvNeXt backbone with a Feature Pyramid Network, CoordConv spatial channels, and SE blocks, achieving 90.69% overall accuracy but a macro-F1 of 67.25% due to class imbalance and confusions between adjacent cohorts.
- The address-to-prediction pipeline includes calibrated confidence estimates and flags low-confidence cases for manual review to mitigate planning risks.
- The system is designed to help energy demand planners optimize district-heating networks and deployment of low-carbon energy systems.
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