Optimal transport with constraints: from mirror descent to classical mechanics
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Finding optimal trajectories for multiple traffic demands in a congested network is a challenging task. Optimal transport theory is a principled approach that has been used successfully to study various transportation problems. Its usage is limited by the lack of principled and flexible ways to incorporate realistic constraints. We propose a principled physics-based approach to impose constraints flexibly in such optimal transport problems. Constraints are included in mirror descent dynamics using the principle of D'Alembert-Lagrange from classical mechanics. This leads to a sparse, local and linear approximation of the feasible set leading in many cases to closed-form updates.
[1] H. van den Berg. Differential inclusions , 2019, Hormones as Tokens of Selection.
[2] Luis Llorens,et al. Appendix , 1838, The Medico-Chirurgical Review.
[3] DG Ener,et al. STRATEGIC PLAN 2020-2024 , 2019 .
[4] Bastian Goldlücke. Variational Analysis , 2014, Computer Vision, A Reference Guide.
[6] E. Lieb,et al. Physical Review Letters , 1958, Nature.