Contact-Rich Robotic Assembly in Construction via Diffusion Policy Learning
arXiv cs.RO / 4/21/2026
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Key Points
- The paper addresses fabrication uncertainty in construction robotic assembly, focusing on contact-rich tasks where friction and geometric constraints make tolerance handling difficult.
- It proposes using diffusion policy learning for construction-scale industrial robots to perform tight-fitting mortise-and-tenon timber joinery despite sensing and positioning errors.
- Sensory-motor diffusion policies are trained from teleoperated demonstrations gathered in an industrial workcell with force/torque sensing.
- A two-phase experimental evaluation shows the best policy reaches 100% success in nominal conditions and 75% average success when positional perturbations up to 10 mm are introduced.
- The findings suggest diffusion policies can compensate for misalignment through contact-aware control, supporting more robust robotic assembly under tight tolerances.
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