Dynamic centrality of headwater sources in river networks: a stochastic approach via ultrametric Laplacians
\'Angel Alfredo Mor\'an Ledezma

TL;DR
This paper introduces a mathematically grounded dynamic centrality index for headwater sources in river networks, revealing their influential role in hydrological transport through ultrametric spectral analysis.
Contribution
It applies a novel dynamic centrality index to river networks, providing a scalable, explicit method to identify influential headwaters based on ultrametric tree analysis.
Findings
High-centrality headwaters transmit water efficiently downstream.
Top-ranked headwaters influence many junctions across transport times.
The index is computable in linear time from tree structure.
Abstract
River networks are hierarchical transport systems in which the timing and position of headwater confluences govern hydrologic response, solute transport, and ecological connectivity. Despite the recognized importance of headwater sources in structuring downstream processes, no mathematically grounded centrality index exists that captures their dynamic role in the transport hierarchy. We apply the dynamic centrality index [Mor\'an Ledezma, arXiv:2603.20922], originally introduced in the context of phylogenetic trees, to the problem of headwater centrality in river networks via the dynamic tree representation of [Zaliapin et al., https://doi.org/10.1029/2009JF001281]. Through a topological analysis of the ultrametric structure induced by the dynamic tree, we show that high-centrality headwaters are the tributaries that most efficiently transmit water into the rest of…
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