Trajectory-Optimized Time Reparameterization for Learning-Compatible Reduced-Order Modeling of Stiff Dynamical Systems
arXiv cs.LG / 3/18/2026
📰 NewsModels & Research
Key Points
- The paper proposes trajectory-optimized time reparameterization (TOTR) as an optimization in arc-length coordinates to mitigate stiffness in neural ODE–based reduced-order models.
- It designs a traversal-speed profile that penalizes acceleration in stretched time, improving the regularity and learnability of the time map.
- The approach is evaluated on three stiff problems—the parameterized stiff linear system, the van der Pol oscillator, and the HIRES chemical kinetics model—showing smoother reparameterizations and better physical-time predictions than existing TR methods under identical training conditions.
- Quantitatively, TOTR achieves loss reductions of one to two orders of magnitude compared with benchmark TR algorithms, indicating robust stiffness mitigation for explicit ML-ROMs.
Related Articles
Does Synthetic Data Generation of LLMs Help Clinical Text Mining?
Dev.to
The Dawn of the Local AI Era: From iPhone 17 Pro to the Future of NVIDIA RTX
Dev.to
[P] Prompt optimization for analog circuit placement — 97% of expert quality, zero training data
Reddit r/MachineLearning
[R] Looking for arXiv endorser (cs.AI or cs.LG)
Reddit r/MachineLearning

I curated an 'Awesome List' for Generative AI in Jewelry- papers, datasets, open-source models and tools included!
Reddit r/artificial