Publication | Closed Access
Dynamic identification of robots with power model
190
Citations
12
References
2002
Year
Unknown Venue
State EstimationNonlinear System IdentificationRobot ControlRobot KinematicsRoboticsEngineeringParameter IdentificationAerospace EngineeringField RoboticsMechanical SystemsMechatronicsDynamic IdentificationSystems EngineeringPower ModelKinematicsSystem IdentificationLeast Squares TechniquesMinimum Dynamic Parameters
This paper presents a new approach to identify the minimum dynamic parameters of robots using least squares techniques (LS) and a power model. Theoretical analysis is carried out from a filtering point of view and clearly shows the superiority of the power model over the energy one and over the dynamic identification model which has been used to carry out a classical ordinary LS estimation and a new weighted LS estimation. These results are checked from comparing experimental identification of the dynamic parameters of a planar SCARA prototype robot.
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