
The design of self-organizing human–swarm intelligence
Author(s) -
Jonas D. Hasbach,
Maren Bennewitz
Publication year - 2021
Publication title -
adaptive behavior
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.286
H-Index - 54
eISSN - 1741-2633
pISSN - 1059-7123
DOI - 10.1177/10597123211017550
Subject(s) - swarm robotics , swarm behaviour , computer science , swarm intelligence , artificial intelligence , robot , interface (matter) , ant robotics , particle swarm optimization , robot control , machine learning , mobile robot , bubble , maximum bubble pressure method , parallel computing
Human–swarm interaction is a frontier in the realms of swarm robotics and human-factors engineering. However, no holistic theory has been explicitly formulated that can inform how humans and robot swarms should interact through an interface while considering real-world demands, the relative capabilities of the components, as well as the desired joint-system behaviours. In this article, we apply a holistic perspective that we refer to as joint human–swarm loops, that is, a cybernetic system made of human, swarm and interface. We argue that a solution for human–swarm interaction should make the joint human–swarm loop an intelligent system that balances between centralized and decentralized control. The swarm-amplified human is suggested as a possible design that combines perspectives from swarm robotics, human-factors engineering and theoretical neuroscience to produce such a joint human–swarm loop. Essentially, it states that the robot swarm should be integrated into the human’s low-level nervous system function. This requires modelling both the robot swarm and the biological nervous system as self-organizing systems. We discuss multiple design implications that follow from the swarm-amplified human, including a computational experiment that shows how the robot swarm itself can be a self-organizing interface based on minimal computational logic.