Virtual Smart Metering in District Heating Networks via Heterogeneous Spatial-Temporal Graph Neural Networks
arXiv cs.LG / 4/14/2026
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Key Points
- The paper addresses the challenge of limited observability in district heating networks caused by sparse instrumentation and frequent sensor faults, which hinders data-driven control, fault detection, and optimization.
- It proposes a heterogeneous spatial-temporal graph neural network (HSTGNN) to build “virtual smart heat meters” by jointly modeling pressure, flow, and temperature using graph-structure learning and temporal-dynamics branches.
- The approach aims to capture coupled nonlinear cross-variable relationships under realistic, heterogeneous network topologies better than prior methods that assume dense synchronized data or rely on simplified analytical hydraulic/thermal assumptions.
- To enable benchmarking and comparison, the authors introduce a controlled laboratory dataset with synchronized high-resolution measurements from the Aalborg Smart Water Infrastructure Laboratory, representative of real operating conditions.
- Experiments reported in the paper indicate the HSTGNN significantly outperforms existing baselines for virtual sensing in district heating settings.


