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Self-Organized Homogenization of Flow Networks

  • Julien Bouvard
  • , Swarnavo Basu
  • , Charlott Leu
  • , Onurcan Bektas
  • , Joachim O. Rädler
  • , Gabriel Amselem
  • , Karen Alim
  • Technical University of Munich
  • Universität München
  • Max Planck Institute for Medical Research

Research output: Contribution to journalArticlepeer-review

Abstract

From the vasculature of animals to the porous media making up batteries, the core task of flow networks is to transport solutes and perfuse all cells or media equally with resources. Yet, living flow networks have a key advantage over porous media: They are adaptive, and they self-organize their geometry for homogeneous perfusion throughout the network. Here, we show that artificial flow networks can also self-organize toward homogeneous perfusion by the versatile adaption of controlled erosion. Flowing a pulse of cleaving enzyme through a network patterned into an erodible hydrogel, with initial channels disparate in width, we observe a homogenization in channel resistances. Experimental observations are matched with numerical simulations of the diffusion-advection-sorption dynamics of an eroding enzyme within a network. Analyzing transport dynamics theoretically, we show that homogenization only occurs if the pulse of the eroding enzyme lasts longer than the time it takes any channel to equilibrate to the pulse concentration. The equilibration time scale derived analytically is in agreement with simulations. Lastly, we show both numerically and experimentally that erosion leads to the homogenization of complex networks containing loops. Erosion being an omnipresent reaction, our results pave the way for a very versatile self-organized increase in the performance of porous media.

Original languageEnglish
Article number041038
JournalPhysical Review X
Volume15
Issue number4
DOIs
Publication statusPublished - 1 Oct 2025

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