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Título

Identifying ground-robot impedance to improve terrain adaptability in running robots

AutorArévalo Reggeti, Juan Carlos R. CSIC; Sanz Merodio, Daniel CSIC; Cestari, Manuel CSIC ORCID; García Armada, Elena CSIC ORCID
Palabras claveRunning robot
Adaptability
Ground-robot impedance
Fecha de publicación2015
EditorInTech
CitaciónInternational Journal of Advanced Robotic Systems 12 (2015)
Resumen© The Author(s). To date, running robots are still outperformed by animals, but their dynamic behaviour can be described by the same model. This coincidence means that biomechanical studies can reveal much about the adaptability and energy efficiency of walking mechanisms. In particular, animals adjust their leg stiffness to negotiate terrains with different stiffnesses to keep the total leg-ground stiffness constant. In this work, we aim to provide one method to identify ground-robot impedance so that control can be applied to emulate the aforementioned animal behaviour. Experimental results of the method are presented, showing well-differentiated estimations on four different types of terrain. Additionally, an analysis of the convergence time is presented and compared with the contact time of humans while running, indicating that the method is suitable for use at high speeds.
URI10261/129625
DOI10.5772/59888
Identificadoresdoi: 10.5772/59888
issn: 1729-8814
Aparece en las colecciones: (CAR) Artículos




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