Control to flocking of the kinetic Cucker-Smale model
Benedetto Piccoli, Francesco Rossi, Emmanuel Tr\'elat

TL;DR
This paper demonstrates that it is possible to enforce flocking in the kinetic Cucker-Smale model using a sparse, centralized control strategy that applies external forces to a limited portion of the agents over time.
Contribution
It introduces a novel sparse control method that guarantees flocking for any initial configuration in the kinetic Cucker-Smale model, with a designed control domain and function.
Findings
Flocking can be achieved from any initial state using sparse control.
The control strategy is based on geometric analysis of the velocity field.
A time-varying control domain is effectively designed to induce flocking.
Abstract
The well-known Cucker-Smale model is a macroscopic system reflecting flocking, i.e. the alignment of velocities in a group of autonomous agents having mutual interactions. In the present paper, we consider the mean-field limit of that model, called the kinetic Cucker-Smale model, which is a transport partial differential equation involving nonlocal terms. It is known that flocking is reached asymptotically whenever the initial conditions of the group of agents are in a favorable configuration. For other initial configurations, it is natural to investigate whether flocking can be enforced by means of an appropriate external force, applied to an adequate time-varying subdomain. In this paper we prove that we can drive to flocking any group of agents governed by the kinetic Cucker-Smale model, by means of a sparse centralized control strategy, and this, for any initial configuration of…
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Taxonomy
TopicsMathematical Biology Tumor Growth · Distributed Control Multi-Agent Systems · Opinion Dynamics and Social Influence
