ArXiv TLDR

Melding LLM and temporal logic for reliable human-swarm collaboration in complex scenarios

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2605.07877

Junfeng Chen, Yuxiao Zhu, An Zhuo, Xintong Zhang, Shuo Zhang + 4 more

cs.RO

TLDR

This paper introduces a neuro-symbolic framework combining LLMs and temporal logic for reliable, low-overhead human-swarm collaboration in dynamic environments.

Key contributions

  • Formalizes mission goals and rules using temporal logic and task automata for verifiable planning.
  • LLMs generate context-grounded subtask sequences adhering to formal constraints and current scene.
  • Uncertainty-aware scheduler assigns subtasks to heterogeneous swarm, maximizing parallelism and resilience.
  • Event-triggered protocol minimizes operator involvement to high-level confirmation and guidance.

Why it matters

This framework addresses challenges in long-horizon human-swarm collaboration by ensuring reliable task planning and reducing operator cognitive load. It offers a scalable and robust paradigm for deploying robot swarms in complex, dynamic environments.

Original Abstract

Robot swarms promise scalable assistance in complex and hazardous environments. Task planning lies at the core of human-swarm collaboration, translating the operator's intent into coordinated swarm actions and helping determine when validation or intervention is required during execution. In long-horizon missions under dynamic scenarios, however, reliable task planning becomes difficult to maintain: emerging events and changing conditions demand continual adaptation, and sustained operator oversight imposes substantial cognitive burden. Existing LLM-based planning tools can support plan generation, yet they remain susceptible to invalid task orderings and infeasible robot actions, resulting in frequent manual adjustment. Here we introduce a neuro-symbolic framework for long-horizon human-swarm collaboration that tightly melds verifiable task planning with context-grounded LLM reasoning. We formalize mission goals and operational rules as temporal logic formulas and admissible task orderings as task automata. Conditioned on these formal constraints and live perceptual context, LLMs generate executable subtask sequences that satisfy mission rules and remain grounded in the current scene. An uncertainty-aware scheduler then assigns subtasks across the heterogeneous swarm to maximize parallelisms while remaining resilient to disruptions. An event-triggered interaction protocol further limits operator involvement to sparse, high-level confirmation and guidance. Deployment on a heterogeneous robotic fleet yields similar results while remaining robust to hardware-specific actuation and communication uncertainties. Together, these results support a formal and scalable paradigm for reliable and low-overhead human-swarm collaboration in dynamic environments

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