Musculoskeletal Robots: Scalability in Neural Control
Metadatos
Afficher la notice complèteAuteur
Richter, Christoph; Jentzsch, Sören; Hostettler, Rafael; Garrido Alcázar, Jesús Alberto; Ros Vidal, Eduardo; Knoll, Alois C.; Röhrbein, Florian; Smagt, Patrick van der; Conradt, JörgEditorial
Institute of Electrical and Electronics Engineers (IEEE)
Date
2016-08-26Referencia bibliográfica
C. Richter et al., "Musculoskeletal Robots: Scalability in Neural Control," in IEEE Robotics & Automation Magazine, vol. 23, no. 4, pp. 128-137, Dec. 2016, doi: 10.1109/MRA.2016.2535081
Patrocinador
German Federal Ministry for Education and Research through the Bernstein Center for Computational Neuroscience Munich (01GQ1004A); European Union Seventh Framework Program (FP7/2007-2013) under grant agreement 604102 (Human Brain Project); European Union Seventh Framework Program (FP7/2007-2013) under grant agreement 288219 (Myorobotics); DLR; Spanish National Project NEUROPACT (TIN2013-47069-P); University of Granada; European Union H2020 Framework Program (H2020-MSCA-IF-2014) under grant agreement 653019 (CEREBSENSING)Résumé
Anthropomimetic robots sense, behave, interact, and feel like humans. By this definition, they require human-like physical hardware and actuation but also brain-like control and sensing. The most self-evident realization to meet those requirements would be a human-like musculoskeletal robot with a brain-like neural controller. While both musculoskeletal robotic hardware and neural control software have existed for decades, a scalable approach that could be used to build and control an anthropomimetic human-scale robot has not yet been demonstrated. Combining Myorobotics, a framework for musculoskeletal robot development, with SpiNNaker, a neuromorphic computing platform, we present the proof of principle of a system that can scale to dozens of neurally controlled, physically compliant joints. At its core, it implements a closed-loop cerebellar model that provides real-time, low-level, neural control at minimal power consumption and maximal extensibility. Higher-order (e.g., cortical) neural networks and neuromorphic sensors like silicon retinae or cochleae can be incorporated.