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Using robust regressions and residual analysis to verify the reliability of LS estimation: Application in robotics

Alexandre Janot, Pierre‐Olivier Vandanjon, Maxime Gautier

Year
2009
Citations
10

Abstract

Usually, the identification of the dynamic parameters of robot makes use of the inverse dynamic model which is linear with respect to the parameters. This model is sampled while the robot is tracking exciting trajectories. This allows using linear least squares (LS) techniques to estimate the parameters. The efficiency of this method has been proved through experimental identifications of a lot of prototypes and industrial robots. However, it is known that LS estimators are sensitive to outliers and leverage points. Thus, it may be helpful to verify their reliability. This is possible by using robust regressions and residual analysis. Then, we compare the results with those obtained with classical LS regression. This paper deals with this issue and introduces the experimental identification and residual analysis of an one degree of freedom (DOF) haptic interface using the Huber's estimator. To verify the pertinence of our analyses, this comparison is also performed on a medical interface consisting of a complex mechanical structure.

Keywords

ResidualOutlierComputer scienceEstimatorLeverage (statistics)Robust regressionRobustness (evolution)RobotReliability (semiconductor)Linear regression

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