Inverse robot calibration using artificial neural networks. Zhong, X., Lewis, J., & N-Nagy, F. L. Engineering Applications of Artificial Intelligence, 9(1):83–93, February, 1996.
Inverse robot calibration using artificial neural networks [link]Paper  doi  abstract   bibtex   
Robot end-effector locations (position and orientation) achieved by controlling joint values obtained from a robot controller will, in general, deviate from the desired location due to inaccuracies in the internal kinematic model. Inverse calibration is defined as finding the corrected joint values to drive a robot so that deviations of the end-effector are minimised. Conventional numerical approaches to the inverse calibration of robots are time-consuming and suffer from numerical problems of illconditioning and singularities. In this paper, methods using arUficial neural networks (NN) have been developed for robot inverse compensation, for both local and global calibration problems. Simulation and experimental results for a Puma robot are presented to show the effectiveness of the NN-based approach.
@article{zhong_inverse_1996,
	title = {Inverse robot calibration using artificial neural networks},
	volume = {9},
	issn = {09521976},
	url = {http://linkinghub.elsevier.com/retrieve/pii/0952197695000690},
	doi = {10.1016/0952-1976(95)00069-0},
	abstract = {Robot end-effector locations (position and orientation) achieved by controlling joint values obtained from a robot controller will, in general, deviate from the desired location due to inaccuracies in the internal kinematic model. Inverse calibration is defined as finding the corrected joint values to drive a robot so that deviations of the end-effector are minimised. Conventional numerical approaches to the inverse calibration of robots are time-consuming and suffer from numerical problems of illconditioning and singularities. In this paper, methods using arUficial neural networks (NN) have been developed for robot inverse compensation, for both local and global calibration problems. Simulation and experimental results for a Puma robot are presented to show the effectiveness of the NN-based approach.},
	language = {en},
	number = {1},
	urldate = {2018-09-25},
	journal = {Engineering Applications of Artificial Intelligence},
	author = {Zhong, Xiaolin and Lewis, John and N-Nagy, Francis L.},
	month = feb,
	year = {1996},
	pages = {83--93},
}

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