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Parameter Identification and Nonparametric Calibration of the Tri-Pyramid Robot

Shuheng Liao, Qiang Zeng, Kornel F. Ehmann, Jian Cao

2020IEEE/ASME Transactions on Mechatronics32 citationsDOI

Abstract

The Tri-pyramid Robot is a 3-degree-of-freedom overconstrained parallel robot designed for the rapid flexible forming of three-dimensional thin sheets without geometry-specific dies used in conventional forming processes. In this article, a combined parametric and nonparametric calibration method for the geometric and nongeometric errors of the Tri-pyramid Robot is presented. The geometry-based inverse and forward kinematic equations are derived. With the actuator values and the relative end-effector positions measured through experiments, the real structural parameters are identified using the nonlinear least-squares method. A neural network is trained to further calibrate the position- and direction-dependent nongeometric errors, such as backlash and link deformations. Combining the end-effector position calculated from the kinematic model and the nongeometric errors predicted with the trained neural network, the end-effector positions can be predicted. The validation experiments show that the accuracy of the robot can be improved by 60% with the proposed method.

Topics & Concepts

BacklashRobot end effectorRobotParametric statisticsKinematicsCalibrationNonlinear systemArtificial neural networkPosition (finance)Artificial intelligenceComputer scienceControl theory (sociology)Nonparametric statisticsRobot calibrationPyramid (geometry)Computer visionMathematicsRobot kinematicsGeometryPhysicsMobile robotStatisticsClassical mechanicsControl (management)Quantum mechanicsFinanceEconomicsRobotic Mechanisms and DynamicsAdvanced Surface Polishing TechniquesPiezoelectric Actuators and Control
Parameter Identification and Nonparametric Calibration of the Tri-Pyramid Robot | Litcius