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Experimental validation of constrained ILC approaches for a high speed rack feeder

Experimental validation of constrained ILC approaches for a high speed rack feeder
Experimental validation of constrained ILC approaches for a high speed rack feeder
Iterative learning control (ILC) is applicable to systems that are required to repeatedly track a desired trajectory of finite duration. Norm-optimal ILC can be characterised as a combined feedforward and feedback learning approach, where the tracking error from the previous trial and the tracking error of the current trial are employed to reduce the tracking error from trial to trial. In this paper, a high speed rack feeder typically used in automated warehouses is considered, which represents a flexible beam structure with a vertically moving mass. Due to kinematic constraints such as a maximum velocity and a maximum acceleration, standard ILC is not applicable if the desired trajectory violates these constraints. One possible solution would be an offline trajectory planning subject to the given kinematic constraints. This paper, however, addresses modifications of the ILC algorithm itself to cope with infeasible trajectories. Two alternative algorithms are given for this purpose and compared with each other in experiments on a test rig that replicates the dynamics of a high speed rack feeder
3631-3636
IEEE
Chu, B.
555a86a5-0198-4242-8525-3492349d4f0f
Rauh, A.
c634dd32-379e-4986-b116-16b1477f8ec5
Aschemann, H.
262f68bc-520e-4c5f-ae53-da7b47ea847e
Rogers, E.
611b1de0-c505-472e-a03f-c5294c63bb72
Chu, B.
555a86a5-0198-4242-8525-3492349d4f0f
Rauh, A.
c634dd32-379e-4986-b116-16b1477f8ec5
Aschemann, H.
262f68bc-520e-4c5f-ae53-da7b47ea847e
Rogers, E.
611b1de0-c505-472e-a03f-c5294c63bb72

Chu, B., Rauh, A., Aschemann, H. and Rogers, E. (2015) Experimental validation of constrained ILC approaches for a high speed rack feeder. In Proceedings of the American Control Conference. IEEE. pp. 3631-3636 . (doi:10.1109/ACC.2015.7171894).

Record type: Conference or Workshop Item (Paper)

Abstract

Iterative learning control (ILC) is applicable to systems that are required to repeatedly track a desired trajectory of finite duration. Norm-optimal ILC can be characterised as a combined feedforward and feedback learning approach, where the tracking error from the previous trial and the tracking error of the current trial are employed to reduce the tracking error from trial to trial. In this paper, a high speed rack feeder typically used in automated warehouses is considered, which represents a flexible beam structure with a vertically moving mass. Due to kinematic constraints such as a maximum velocity and a maximum acceleration, standard ILC is not applicable if the desired trajectory violates these constraints. One possible solution would be an offline trajectory planning subject to the given kinematic constraints. This paper, however, addresses modifications of the ILC algorithm itself to cope with infeasible trajectories. Two alternative algorithms are given for this purpose and compared with each other in experiments on a test rig that replicates the dynamics of a high speed rack feeder

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More information

Published date: 3 July 2015
Venue - Dates: 2015 American Control Conference, ACC 2015, , Chicago, United States, 2015-07-01 - 2015-07-03

Identifiers

Local EPrints ID: 472442
URI: http://eprints.soton.ac.uk/id/eprint/472442
PURE UUID: 9b0da4cd-14e6-474a-bb42-44b1df6112b0
ORCID for B. Chu: ORCID iD orcid.org/0000-0002-2711-8717
ORCID for E. Rogers: ORCID iD orcid.org/0000-0003-0179-9398

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Date deposited: 05 Dec 2022 18:07
Last modified: 17 Mar 2024 03:28

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Contributors

Author: B. Chu ORCID iD
Author: A. Rauh
Author: H. Aschemann
Author: E. Rogers ORCID iD

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