Source code for The Power of Many: A Physarum Swarm Steiner Tree Algorithm

Overview

Physarum-Swarm-Steiner-Algo

Source code for The Power of Many: A Physarum Steiner Tree Algorithm

Code implements ideas from the following papers:

  • Sheryl Hsu and Laura P. Schaposnik. Cell fusion through slime mold network dynamics. Manuscript submitted for publication, 2021. https://arxiv.org/abs/2106.11371
  • Y. Gunji, Y.-P. Gunji, T. Shirakawa, T. Niizato, and T. Haruna, “Minimal model of a cell connecting amoebic motion andadaptive transport networks,” Journal of Theoretical Biology, pp. 659 – 667, 2008.

Three implementations are provided: the standard algorithm which works on both rectangles and squares, an obstacle avoidance implementation, and finally a implementation to find Steiner trees on a torus. Sample grids and boundaries are provided in grids.

Url of this repository: https://github.com/sher222/Physarum-Swarm-Steiner-Algo/tree/main

Owner
Sheryl Hsu
Sheryl Hsu
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