A Decomposition Theorem for Dynamic Flows
Lukas Graf, Tobias Harks, Julian Schwarz

TL;DR
This paper extends the classical flow decomposition theorem to dynamic flows, proving that any integrable dynamic edge flow can be decomposed into inflows along walks and cycles, with algorithms for such decompositions and new theoretical insights.
Contribution
It introduces a dynamic flow decomposition theorem, generalizes classical algorithms, and develops the concept of autonomous network loadings for dynamic flow analysis.
Findings
Decomposition of dynamic flows into walk inflows and cycles proven.
Algorithm for dynamic flow decomposition converges under certain conditions.
New properties of autonomous network loadings established.
Abstract
The famous flow decomposition theorem of Gallai (1985) states that any static edge ,-flow in a directed graph can be decomposed into a nonnegative linear combination of incidence vectors of paths and cycles. In this paper, we study the decomposition problem for the setting of dynamic edge ,-flows assuming a quite general dynamic flow propagation model. We prove the following decomposition theorem: For any integrable dynamic edge ,-flow, there exists a decomposition into a nonnegative linear combination of ,-walk inflows and cycles of zero transit time. We show that a variant of the classical algorithmic approach of iteratively subtracting walk inflows from the current dynamic edge flow converges to a dynamic circulation and that every such circulation can be induced by inflows into cycles of zero transit time. The algorithm terminates in finite time, if there is…
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Taxonomy
TopicsFluid Dynamics and Turbulent Flows · Simulation Techniques and Applications · Advanced Control Systems Optimization
