Gain-scheduled control of a solar power plant using a hierarchical MOGA-tuned fuzzy Pi-Controller
Gain-scheduled control of a solar power plant using a hierarchical MOGA-tuned fuzzy Pi-Controller
In order to regulate the significant variations in the dynamic characteristics of a distributed collector field in a solar power plant, various control techniques including feedforward control, gain scheduling and fuzzy control have been considered in the past. This paper develops some of these previous approaches by considering the operating conditions of the plant and the desired controlled responses. The result is a control scheme that employs a fuzzy PI controller, with feedforward, for the highly nonlinear part of the operating regime and gain scheduled control over the more linear part of the operating envelope. In order to satisfy performance characteristics for the plant at different points in the operating regime, a multiobjective genetic algorithm is used to design the parameters of the fuzzy controller. To reduce the size of the search space and the resulting fuzzy controller, a hierarchical encoding is employed with the multiobjective genetic algorithm. The resulting controller is shown to both satisfy the desired performance criteria and have a reduced number of terms compared with a conventional design approach
0780370902
25-29
Stirrup, R.
79047437-1b34-4335-bb5d-d48e15e4c03e
Loebis, D.
04c80883-297b-4db4-af04-2afe5798d604
Chipperfield, A.J.
524269cd-5f30-4356-92d4-891c14c09340
Tang, K.S.
38572319-12ee-4f70-92cc-af263ecc99eb
Kwong, S.
e09d9c8d-a313-45b4-bfa0-3b4d9e9e8926
Man, K.F.
98d22be4-2f40-41c5-9c7c-a7b161957cc3
2001
Stirrup, R.
79047437-1b34-4335-bb5d-d48e15e4c03e
Loebis, D.
04c80883-297b-4db4-af04-2afe5798d604
Chipperfield, A.J.
524269cd-5f30-4356-92d4-891c14c09340
Tang, K.S.
38572319-12ee-4f70-92cc-af263ecc99eb
Kwong, S.
e09d9c8d-a313-45b4-bfa0-3b4d9e9e8926
Man, K.F.
98d22be4-2f40-41c5-9c7c-a7b161957cc3
Stirrup, R., Loebis, D., Chipperfield, A.J., Tang, K.S., Kwong, S. and Man, K.F.
(2001)
Gain-scheduled control of a solar power plant using a hierarchical MOGA-tuned fuzzy Pi-Controller.
In Proceedings of the IEEE Symposium on Industrial Electronics 2001.
IEEE.
.
(doi:10.1109/ISIE.2001.931749).
Record type:
Conference or Workshop Item
(Paper)
Abstract
In order to regulate the significant variations in the dynamic characteristics of a distributed collector field in a solar power plant, various control techniques including feedforward control, gain scheduling and fuzzy control have been considered in the past. This paper develops some of these previous approaches by considering the operating conditions of the plant and the desired controlled responses. The result is a control scheme that employs a fuzzy PI controller, with feedforward, for the highly nonlinear part of the operating regime and gain scheduled control over the more linear part of the operating envelope. In order to satisfy performance characteristics for the plant at different points in the operating regime, a multiobjective genetic algorithm is used to design the parameters of the fuzzy controller. To reduce the size of the search space and the resulting fuzzy controller, a hierarchical encoding is employed with the multiobjective genetic algorithm. The resulting controller is shown to both satisfy the desired performance criteria and have a reduced number of terms compared with a conventional design approach
Text
stir_01.pdf
- Accepted Manuscript
More information
Published date: 2001
Venue - Dates:
IEEE Symposium on Industrial Electronics 2001, Pusan, South Korea, 2001-06-12 - 2001-06-16
Identifiers
Local EPrints ID: 22108
URI: http://eprints.soton.ac.uk/id/eprint/22108
ISBN: 0780370902
PURE UUID: 9825d2a9-39f5-403d-8c40-6ed112fe9e2e
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Date deposited: 02 Mar 2007
Last modified: 16 Mar 2024 03:31
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Contributors
Author:
R. Stirrup
Author:
D. Loebis
Author:
K.S. Tang
Author:
S. Kwong
Author:
K.F. Man
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