4.8 Article

Programming active cohesive granular matter with mechanically induced phase changes

Journal

SCIENCE ADVANCES
Volume 7, Issue 17, Pages -

Publisher

AMER ASSOC ADVANCEMENT SCIENCE
DOI: 10.1126/sciadv.abe8494

Keywords

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Funding

  1. Department of Defense under MURI award [W911NF-19-1-0233]
  2. NSF [DMS-1803325, CCF-1422603, CCF-1637393, CCF-1733680, CCF-1637031, CCF-1733812, CCF-1526900]

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This study introduces a method for controlling robotic swarms at macro and micro scales through theoretical abstraction and experimental systems, exploring collective behaviors guided by physical interactions. The research shows that increasing interparticle attraction can lead to a transition from dispersed to compact phase, enabling the collective to perform emergent tasks.
At the macroscale, controlling robotic swarms typically uses substantial memory, processing power, and coordination unavailable at the microscale, e.g., for colloidal robots, which could be useful for fighting disease, fabricating intelligent textiles, and designing nanocomputers. To develop principles that can leverage physical interactions and thus be used across scales, we take a two-pronged approach: a theoretical abstraction of self-organizing particle systems and an experimental robot system of active cohesive granular matter that intentionally lacks digital electronic computation and communication, using minimal (or no) sensing and control. As predicted by theory, as interparticle attraction increases, the collective transitions from dispersed to a compact phase. When aggregated, the collective can transport non-robot impurities, thus performing an emergent task driven by the physics underlying the transition. These results reveal a fruitful interplay between algorithm design and active matter robophysics that can result in principles for programming collectives without the need for complex algorithms or capabilities.

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