Optimal Sensor Placement in Power Transformers Using Physics-Informed Neural Networks

Our work aims at simulating and predicting the temperature conditions inside a power transformer using Physics-Informed Neural Networks (PINNs). The predictions obtained are then used to determine the optimal placement for temperature sensors inside the transformer under the constraint of a limited number of sensors, enabling efficient performance monitoring. The method consists of combining PINNs with Mixed Integer Optimization Programming to obtain the optimal temperature reconstruction inside the transformer. First, we extend our PINN model for the thermal modeling of power transformers to solve the heat diffusion equation from 1D to 2D space. Finally, we construct an optimal sensor placement model inside the transformer that can be applied to problems in 1D and 2D.
View on arXiv@article{li2025_2502.00552, title={ Optimal Sensor Placement in Power Transformers Using Physics-Informed Neural Networks }, author={ Sirui Li and Federica Bragone and Matthieu Barreau and Tor Laneryd and Kateryna Morozovska }, journal={arXiv preprint arXiv:2502.00552}, year={ 2025 } }