Continuum soft robots are nonlinear mechanical systems with theoretically infinite degrees of freedom (DoFs) that exhibit complex behaviors. Achieving motor intelligence under dynamic conditions necessitates the development of control-oriented reduced-order models (ROMs), which employ as few DoFs as possible while still accurately capturing the core characteristics of the theoretically infinite-dimensional dynamics. However, there is no quantitative way to measure if the ROM of a soft robot has succeeded in this task. In other fields, like structural dynamics or flexible link robotics, linear normal modes are routinely used to this end. Yet, this theory is not applicable to soft robots due to their nonlinearities. In this work, we propose to use the recent nonlinear extension in modal theory –called eigenmanifolds– as a means to evaluate control-oriented models for soft robots and compare them. To achieve this, we propose three similarity metrics relying on the projection of the nonlinear modes of the system into a task space of interest. We use this approach to compare quantitatively, for the first time, ROMs of increasing order generated under the piecewise constant curvature (PCC) hypothesis with a high- dimensional finite element (FE)-like model of a soft arm. Results show that by increasing the order of the discretization, the eigenmanifolds of the PCC model converge to those of the FE model.

Nonlinear Modes as a Tool for Comparing the Mathematical Structure of Dynamic Models of Soft Robots / Pustina, Pietro; Calzolari, Davide; Albu-Schäffer, Alin; De Luca, Alessandro; Della Santina, Cosimo. - (2024), pp. 779-785. (Intervento presentato al convegno 2024 IEEE 7th International Conference on Soft Robotics tenutosi a San Diego; USA) [10.1109/robosoft60065.2024.10521987].

Nonlinear Modes as a Tool for Comparing the Mathematical Structure of Dynamic Models of Soft Robots

Pustina, Pietro
;
De Luca, Alessandro
;
2024

Abstract

Continuum soft robots are nonlinear mechanical systems with theoretically infinite degrees of freedom (DoFs) that exhibit complex behaviors. Achieving motor intelligence under dynamic conditions necessitates the development of control-oriented reduced-order models (ROMs), which employ as few DoFs as possible while still accurately capturing the core characteristics of the theoretically infinite-dimensional dynamics. However, there is no quantitative way to measure if the ROM of a soft robot has succeeded in this task. In other fields, like structural dynamics or flexible link robotics, linear normal modes are routinely used to this end. Yet, this theory is not applicable to soft robots due to their nonlinearities. In this work, we propose to use the recent nonlinear extension in modal theory –called eigenmanifolds– as a means to evaluate control-oriented models for soft robots and compare them. To achieve this, we propose three similarity metrics relying on the projection of the nonlinear modes of the system into a task space of interest. We use this approach to compare quantitatively, for the first time, ROMs of increasing order generated under the piecewise constant curvature (PCC) hypothesis with a high- dimensional finite element (FE)-like model of a soft arm. Results show that by increasing the order of the discretization, the eigenmanifolds of the PCC model converge to those of the FE model.
2024
2024 IEEE 7th International Conference on Soft Robotics
soft robotics; reduced-order dynamic models; nonlinear modes; eigenmanifolds
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Nonlinear Modes as a Tool for Comparing the Mathematical Structure of Dynamic Models of Soft Robots / Pustina, Pietro; Calzolari, Davide; Albu-Schäffer, Alin; De Luca, Alessandro; Della Santina, Cosimo. - (2024), pp. 779-785. (Intervento presentato al convegno 2024 IEEE 7th International Conference on Soft Robotics tenutosi a San Diego; USA) [10.1109/robosoft60065.2024.10521987].
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Note: DOI 10.1109/RoboSoft60065.2024.10521987
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1711844
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