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1.
Bioinspir Biomim ; 12(2): 025007, 2017 02 28.
Article in English | MEDLINE | ID: mdl-28140363

ABSTRACT

We introduce an octopus-inspired, underwater, soft-bodied robot capable of performing waterborne pulsed-jet propulsion and benthic legged-locomotion. This vehicle consists for as much as 80% of its volume of rubber-like materials so that structural flexibility is exploited as a key element during both modes of locomotion. The high bodily softness, the unconventional morphology and the non-stationary nature of its propulsion mechanisms require dynamic characterization of this robot to be dealt with by ad hoc techniques. We perform parameter identification by resorting to a hybrid optimization approach where the characterization of the dual ambulatory strategies of the robot is performed in a segregated fashion. A least squares-based method coupled with a genetic algorithm-based method is employed for the swimming and the crawling phases, respectively. The outcomes bring evidence that compartmentalized parameter identification represents a viable protocol for multi-modal vehicles characterization. However, the use of static thrust recordings as the input signal in the dynamic determination of shape-changing self-propelled vehicles is responsible for the critical underestimation of the quadratic drag coefficient.


Subject(s)
Algorithms , Biomimetic Materials , Biomimetics , Octopodiformes/physiology , Robotics , Swimming/physiology , Animals , Computer Simulation , Equipment Design , Least-Squares Analysis , Octopodiformes/anatomy & histology
2.
Bioinspir Biomim ; 10(4): 046012, 2015 Jul 30.
Article in English | MEDLINE | ID: mdl-26226238

ABSTRACT

This paper studies underwater legged locomotion (ULL) by means of a robotic octopus-inspired prototype and its associated model. Two different types of propulsive actions are embedded into the robot model: reaction forces due to leg contact with the ground and hydrodynamic forces such as the drag arising from the sculling motion of the legs. Dynamic parameters of the model are estimated by means of evolutionary techniques and subsequently the model is exploited to highlight some distinctive features of ULL. Specifically, the separation between the center of buoyancy (CoB)/center of mass and density affect the stability and speed of the robot, whereas the sculling movements contribute to propelling the robot even when its legs are detached from the ground. The relevance of these effects is demonstrated through robotic experiments and model simulations; moreover, by slightly changing the position of the CoB in the presence of the same feed-forward activation, a number of different behaviors (i.e. forward and backward locomotion at different speeds) are achieved.


Subject(s)
Biomimetics/instrumentation , Extremities/physiology , Octopodiformes/physiology , Robotics/instrumentation , Ships/instrumentation , Swimming/physiology , Animals , Biomimetics/methods , Computer Simulation , Computer-Aided Design , Equipment Design , Equipment Failure Analysis , Immersion , Models, Biological , Robotics/methods
3.
Bioinspir Biomim ; 10(3): 035006, 2015 May 13.
Article in English | MEDLINE | ID: mdl-25970238

ABSTRACT

This work addresses the inverse kinematics problem of a bioinspired octopus-like manipulator moving in three-dimensional space. The bioinspired manipulator has a conical soft structure that confers the ability of twirling around objects as a real octopus arm does. Despite the simple design, the soft conical shape manipulator driven by cables is described by nonlinear differential equations, which are difficult to solve analytically. Since exact solutions of the equations are not available, the Jacobian matrix cannot be calculated analytically and the classical iterative methods cannot be used. To overcome the intrinsic problems of methods based on the Jacobian matrix, this paper proposes a neural network learning the inverse kinematics of a soft octopus-like manipulator driven by cables. After the learning phase, a feed-forward neural network is able to represent the relation between manipulator tip positions and forces applied to the cables. Experimental results show that a desired tip position can be achieved in a short time, since heavy computations are avoided, with a degree of accuracy of 8% relative average error with respect to the total arm length.


Subject(s)
Biomimetics/methods , Computer-Aided Design , Extremities/physiology , Models, Biological , Octopodiformes/physiology , Robotics/methods , Animals , Kinetics , Motion
4.
Bioinspir Biomim ; 7(2): 025006, 2012 Jun.
Article in English | MEDLINE | ID: mdl-22617222

ABSTRACT

Control and modelling of continuum robots are challenging tasks for robotic researchers. Most works on modelling are limited to piecewise constant curvature. In many cases they neglect to model the actuators or avoid a continuum approach. In particular, in the latter case this leads to a complex model hardly implemented. In this work, a geometrically exact steady-state model of a tendon-driven manipulator inspired by the octopus arm is presented. It takes a continuum approach, fast enough to be implemented in the control law, and includes a model of the actuation system. The model was experimentally validated and the results are reported. In conclusion, the model presented can be used as a tool for mechanical design of continuum tendon-driven manipulators, for planning control strategies or as internal model in an embedded system.


Subject(s)
Biomimetic Materials , Extremities/physiology , Models, Biological , Octopodiformes/physiology , Robotics/instrumentation , Tendons/physiology , Animals , Computer Simulation , Elastic Modulus/physiology , Equipment Design , Equipment Failure Analysis
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