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ArtikelChoosing Measurement Poses For Robot Calibration With The Local Convergence Method And Tabu Search  
Oleh: Daney, David ; Papegay, Yves ; Madeline, Blaise
Jenis: Article from Journal - ilmiah internasional
Dalam koleksi: The International Journal of Robotics Research vol. 24 no. 6 (Jun. 2004), page 501-518.
Topik: robust design; experimentation; calibration; parallel robot; local convergence; Tabu search
Fulltext: 501.pdf (682.33KB)
Isi artikelThe robustness of robot calibration with respect to sensor noise is sensitive to the manipulator poses used to collect measurement data. In this paper we propose an algorithm based on a constrained optimization method, which allows us to choose a set of measurement configurations. It works by selecting iteratively one pose after another inside the workspace. After a few steps, a set of configurations is obtained, which maximizes an index of observability associated with the identification Jacobian. This algorithm has been shown, in a former work, to be sensitive to local minima. This is why we propose here meta-heuristic methods to decrease this sensibility of our algorithm. Finally, a validation through the simulation of a calibration experience shows that using selected configurations significantly improve the kinematic parameter identification by dividing by 10–15 the noise associated with the results. Also, we present an application to the calibration of a parallel robot with a vision-based measurement device.
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