Deep Optimal Sensor Placement for Black Box Stochastic Simulations

Abstract

Selecting cost-effective optimal sensor configurations for subsequent inference of parameters in black-box stochastic systems faces significant computational barriers. We propose a novel and robust approach, modelling the joint distribution over input parameters and solution with a joint energy-based model, trained on simulation data. Unlike existing simulation-based inference approaches, which must be tied to a specific set of point evaluations, we learn a functional representation of parameters and solution. This is used as a resolution-independent plug-and-play surrogate for the joint distribution, which can be conditioned over any set of points, permitting an efficient approach to sensor placement. We demonstrate the validity of our framework on a variety of stochastic problems, showing that our method provides highly informative sensor locations at a lower computational cost compared to conventional approaches.

Cite

Text

Encinar et al. "Deep Optimal Sensor Placement for Black Box Stochastic Simulations." ICLR 2025 Workshops: FPI, 2025.

Markdown

[Encinar et al. "Deep Optimal Sensor Placement for Black Box Stochastic Simulations." ICLR 2025 Workshops: FPI, 2025.](https://mlanthology.org/iclrw/2025/encinar2025iclrw-deep/)

BibTeX

@inproceedings{encinar2025iclrw-deep,
  title     = {{Deep Optimal Sensor Placement for Black Box Stochastic Simulations}},
  author    = {Encinar, Paula Cordero and Schröder, Tobias and Yatsyshin, Peter and Duncan, Andrew B.},
  booktitle = {ICLR 2025 Workshops: FPI},
  year      = {2025},
  url       = {https://mlanthology.org/iclrw/2025/encinar2025iclrw-deep/}
}