Autor*in
Abstract
This paper presents a residual-informed machine learning approach for replacing algebraic loops in equation-based Modelica models with neural network surrogates. A feedforward neural network is trained using the residual (error) of the algebraic loop directly in its loss function, eliminating the need for a supervised dataset. This training strategy also resolves the issue of ambiguous solutions, allowing the surrogate to converge to a consistent solution rather than averaging multiple valid ones. Applied to the large-scale IEEE 14-Bus system, our method achieves a 60% reduction in simulation time compared to conventional simulations, while maintaining the same level of accuracy through error control mechanisms.
Erscheinungsjahr
Zeitschriftentitel
arXiv:2510.09317
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Brandt, Felix ; Heuermann, Andreas ; Hannebohm, Philip ; Bachmann, Bernhard: Residual-Informed Learning of Solutions to Algebraic Loops. In: arXiv:2510.09317 (2025)
Brandt F, Heuermann A, Hannebohm P, Bachmann B. Residual-Informed Learning of Solutions to Algebraic Loops. arXiv:251009317. 2025.
Brandt, F., Heuermann, A., Hannebohm, P., & Bachmann, B. (2025). Residual-Informed Learning of Solutions to Algebraic Loops. ArXiv:2510.09317.
@article{Brandt_Heuermann_Hannebohm_Bachmann_2025, title={Residual-Informed Learning of Solutions to Algebraic Loops}, journal={arXiv:2510.09317}, author={Brandt, Felix and Heuermann, Andreas and Hannebohm, Philip and Bachmann, Bernhard}, year={2025} }
Brandt, Felix, Andreas Heuermann, Philip Hannebohm, and Bernhard Bachmann. “Residual-Informed Learning of Solutions to Algebraic Loops.” ArXiv:2510.09317, 2025.
F. Brandt, A. Heuermann, P. Hannebohm, and B. Bachmann, “Residual-Informed Learning of Solutions to Algebraic Loops,” arXiv:2510.09317. 2025.
Brandt, Felix, et al. “Residual-Informed Learning of Solutions to Algebraic Loops.” ArXiv:2510.09317, 2025.
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