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Autonomous Dry Stone, 2019-2022
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Forschungsprojekt
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This research is focused on the autonomous, on-site planning and construction of large-scale dry stack structures (walls constructed with irregular stones, without mortar). The project develops an adaptive planning and fabrication pipeline that steers construction towards digitally defined global geometries, while allowing for the use of abundantly available—and highly varied—locally-sourced rock and recycled demolition materials that are extremely low in embodied energy. The process provides a fully reversible alternative to concrete that can be applied, for example, to the construction of retaining walls, load-bearing structures, and revetments for civil infrastructure and landscaping.
The core component of the research is a parallelized planning algorithm and custom software interface that combines feature-based candidate seeding with heuristics adapted from traditional masonry methods, constrained registration, rigid body simulation, and learned classifiers in order to select and position stones from a limited inventory of scanned objects such that they align with a designer-specified target surface.
The construction process has been tailored to the use of HEAP (Hydraulic Excavator for an Autonomous Purpose), a modified 12-ton Menzi Muck M545 walking excavator developed by the Robotic Systems Lab (RSL). The mobile machine uses GNSS and cabin- and arm-mounted LiDAR sensors to provide models of the environment, the available stones, and the in-progress wall — enabling the planner to adapt to the local terrain and account for any settling and unexpected deviations throughout construction. The high payload capacity, reach, and maneuverability of the excavator have facilitated the production of several massive demonstration structures, consisting of tens or hundreds of elements (boulders and concrete debris, approximately 1000 kg each) and reaching heights up to 6 meters.
This research project is pursued in the framework of the National Competence Centre of Research (NCCR) Digital Fabrication.
Publications
Johns, Ryan Luke, Martin Wermelinger, Ruben Mascaro, Dominic Jud, Fabio Gramazio, Matthias Kohler, Margarita Chli, and Marco Hutter. “Autonomous Dry Stone.” Construction Robotics 4, no. 3 (2020): 127–40.
Link
Wermelinger, Martin, Ryan Luke Johns, Fabio Gramazio, Matthias Kohler, and Marco Hutter. “Grasping and Object Reorientation for Autonomous Construction of Stone Structures.” IEEE Robotics and Automation Letters 6, no. 3 (2021): 5105–12.
Link
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Credits:
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Gramazio Kohler Research, ETH Zurich
Collaborators: Ryan Luke Johns (project lead), Martin Wermelinger, Dominic Jud, Ruben Mascaro, Varin Buff, Vuk Pajovic, Mads Albers, Jomana Baddad, Indra Santosa Dr. Kathrin Dörfler, Dr. Aleksandra Anna Apolinarska, Dr. Lauren Vasey, Prof. Dr. Margarita Chli, Prof. Dr. Marco Hutter
Co-Supervisors: Prof. Dr. Olga Sorkine-Hornung, Prof. Dr. Marco Hutter
Research Programme: NCCR Digital Fabrication 1C2: Mobile Robotic Aggregation of Found Objects
In cooperation with: Robotic Systems Lab (RSL), Vision for Robotics Lab (V4RL)
Sponsors: Eberhard Unternehmungen AG
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