Emergence of Internal State-Modulated Swarming in Multi-Agent Patch Foraging System
Siddharth Chaturvedi, Ahmed EL-Gazzar, Marcel van Gerven

TL;DR
This paper demonstrates how internal state-modulated swarming behaviors emerge in multi-agent foraging systems through evolved neural controllers, influenced by resource levels and partial observability.
Contribution
It introduces a simulation of resource-foraging agents with evolved recurrent neural controllers that exhibit adaptive swarming behaviors based on internal states.
Findings
Swarming behavior emerges when resource patches are absent.
Swarming strength is inversely related to stored resource levels.
Hidden states in controllers are sensitive to resource amounts and influence aggregation.
Abstract
Active particles are entities that sustain persistent out-of-equilibrium motion by consuming energy. Under certain conditions, they exhibit the tendency to self-organize through coordinated movements, such as swarming via aggregation. While performing non-cooperative foraging tasks, the emergence of such swarming behavior in foragers, exemplifying active particles, has been attributed to the partial observability of the environment, in which the presence of another forager can serve as a proxy signal to indicate the potential presence of a food source or a resource patch. In this paper, we validate this phenomenon by simulating multiple self-propelled foragers as they forage from multiple resource patches in a non-cooperative manner. These foragers operate in a continuous two-dimensional space with stochastic position updates and partial observability. We evolve a shared policy in the…
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