ArXiv TLDR

Task-Driven Co-Design of Heterogeneous Multi-Robot Systems

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2604.21894

Maximilian Stralz, Meshal Alharbi, Yujun Huang, Gioele Zardini

cs.ROcs.MA

TLDR

This paper introduces a formal, compositional framework for the task-driven co-design of heterogeneous multi-robot systems, optimizing robot design, fleet, and planning.

Key contributions

  • Presents a formal, compositional framework for task-driven co-design of multi-robot systems.
  • Introduces general abstractions for robots, fleets, planners, and evaluators with clear interfaces.
  • Enables efficient joint optimization of robot design, fleet composition, and task planning.
  • Systematically uncovers non-obvious design alternatives with optimality guarantees.

Why it matters

Designing multi-robot systems is complex due to tightly coupled decisions. This paper offers a formal co-design framework that jointly optimizes robot design, fleet, and planning, addressing a critical gap in system-level reasoning. It enables more efficient and principled development of complex heterogeneous multi-robot systems.

Original Abstract

Designing multi-agent robotic systems requires reasoning across tightly coupled decisions spanning heterogeneous domains, including robot design, fleet composition, and planning. Much effort has been devoted to isolated improvements in these domains, whereas system-level co-design considering trade-offs and task requirements remains underexplored. In this work, we present a formal and compositional framework for the task-driven co-design of heterogeneous multi-robot systems. Building on a monotone co-design theory, we introduce general abstractions of robots, fleets, planners, executors, and evaluators as interconnected design problems with well-defined interfaces that are agnostic to both implementations and tasks. This structure enables efficient joint optimization of robot design, fleet composition, and planning under task-specific performance constraints. A series of case studies demonstrates the capabilities of the framework. Various component models can be seamlessly incorporated, including new robot types, task profiles, and probabilistic sensing objectives, while non-obvious design alternatives are systematically uncovered with optimality guarantees. The results highlight the flexibility, scalability, and interpretability of the proposed approach, and illustrate how formal co-design enables principled reasoning about complex heterogeneous multi-robot systems.

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