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Better tired than lost: Turtle ant trail networks favor coherence over short edges

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  • Arjun Chandrasekhar
  • James A R Marshall
  • Cortnea Austin
  • Saket Navlakha
  • Deborah M Gordon

Abstract

Creating a routing backbone is a fundamental problem in both biology and engineering. The routing backbone of the trail networks of arboreal turtle ants (Cephalotes goniodontus) connects many nests and food sources using trail pheromone deposited by ants as they walk. Unlike species that forage on the ground, the trail networks of arboreal ants are constrained by the vegetation. We examined what objectives the trail networks meet by comparing the observed ant trail networks with networks of random, hypothetical trail networks in the same surrounding vegetation and with trails optimized for four objectives: minimizing path length, minimizing average edge length, minimizing number of nodes, and minimizing opportunities to get lost. The ants’ trails minimized path length by minimizing the number of nodes traversed rather than choosing short edges. In addition, the ants’ trails reduced the opportunity for ants to get lost at each node, favoring nodes with 3D configurations most likely to be reinforced by pheromone. Thus, rather than finding the shortest edges, turtle ant trail networks take advantage of natural variation in the environment to favor coherence, keeping the ants together on the trails.Author summary: We investigated the trail networks of arboreal turtle ants in the canopy of the tropical forest, to ask what characterizes the colony’s choice of foraging paths within the vegetation. We monitored day to day changes in the junctions and edges of trail networks of colonies in the dry forest of western Mexico. We compared the paths used by the ants to simulated random paths in the surrounding vegetation. We found that the paths of turtle ants prioritize coherence, keeping ants together on the trail, over minimizing the average edge length. The choice of paths reduces the number of junctions in the trail where ants could get lost, and favors junctions with a physical configuration that makes it likely that successive ants will reinforce the same path. Our work suggests that design principles that emphasize keeping information flow constrained to streamlined, coherent trails may be useful in human-designed distributed routing and transport networks or robot swarms.

Suggested Citation

  • Arjun Chandrasekhar & James A R Marshall & Cortnea Austin & Saket Navlakha & Deborah M Gordon, 2021. "Better tired than lost: Turtle ant trail networks favor coherence over short edges," PLOS Computational Biology, Public Library of Science, vol. 17(10), pages 1-24, October.
  • Handle: RePEc:plo:pcbi00:1009523
    DOI: 10.1371/journal.pcbi.1009523
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    References listed on IDEAS

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    4. Audrey Dussutour & Vincent Fourcassié & Dirk Helbing & Jean-Louis Deneubourg, 2004. "Optimal traffic organization in ants under crowded conditions," Nature, Nature, vol. 428(6978), pages 70-73, March.
    5. John Vandermeer & Ivette Perfecto & Stacy M. Philpott, 2008. "Clusters of ant colonies and robust criticality in a tropical agroecosystem," Nature, Nature, vol. 451(7177), pages 457-459, January.
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