Modeling Minimum Cost Network Flows With Port-Hamiltonian Systems
Abstract
We give a short overview of advantages and drawbacks of the classical formulation of minimum cost network flow problems and solution techniques, to motivate a reformulation of classical static minimum cost network flow problems as optimal control problems constrained by port-Hamiltonian systems (pHS). The first-order optimality system for the port-Hamiltonian system-constrained optimal control problem is formally derived. Then we propose a gradient-based algorithm to find optimal controls. The port-Hamiltonian system formulation naturally conserves flow and supports a wide array of further modeling options as, for example, node reservoirs, flow dependent costs, leaking pipes (dissipation) and coupled sub-networks (ports). They thus provide a versatile alternative to state-of-the art approaches towards dynamic network flow problems, which are often based on computationally costly time-expanded networks. We argue that this opens the door for a plethora of modeling options and solution approaches for network flow problems.
Cite
@article{arxiv.2303.13196,
title = {Modeling Minimum Cost Network Flows With Port-Hamiltonian Systems},
author = {Onur Tanil Doganay and Kathrin Klamroth and Bruno Lang and Michael Stiglmayr and Claudia Totzeck},
journal= {arXiv preprint arXiv:2303.13196},
year = {2023}
}