MeanFlow Meets Control: Scaling Sampled-Data Control for Swarms

arXiv cs.LG / 3/23/2026

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Key Points

  • It tackles steering large-scale swarms in sampled-data control, where inputs update intermittently and are applied over finite intervals.
  • It learns the finite-horizon minimum-energy control coefficient that parameterizes the control for each interval and provides both an integral representation and a local differential identity along bridge trajectories.
  • The training objective uses a stop-gradient formulation, and the learned coefficient is applied directly in sampled-data updates to respect the prescribed dynamics and actuation map.
  • The framework provides a scalable approach to few-step swarm steering that aligns with real control systems' sampled-data structure and is inspired by MeanFlow.

Abstract

Steering large-scale swarms in only a few control updates is challenging because real systems operate in sampled-data form: control inputs are updated intermittently and applied over finite intervals. In this regime, the natural object is not an instantaneous velocity field, but a finite-window control quantity that captures the system response over each sampling interval. Inspired by MeanFlow, we introduce a control-space learning framework for swarm steering under linear time-invariant dynamics. The learned object is the coefficient that parameterizes the finite-horizon minimum-energy control over each interval. We show that this coefficient admits both an integral representation and a local differential identity along bridge trajectories, which leads to a simple stop-gradient training objective. At implementation time, the learned coefficient is used directly in sampled-data updates, so the prescribed dynamics and actuation map are respected by construction. The resulting framework provides a scalable approach to few-step swarm steering that is consistent with the sampled-data structure of real control systems.