Cluster Analysis and Switching Control: A Post-Processing of Multi-Objective Optimal Designs
2016 ◽
Keyword(s):
The multi-objective optimal control design usually generates hundreds or thousands of Pareto optimal solutions. How to assist an user to select an appropriate controller to implement is a post-processing issue. In this paper, we develop a method of cluster analysis of the Pareto optimal designs to discover the similarity of the optimal controllers. After we identify the clusters of optimal controllers, we then develop a switching strategy to select controls from different clusters to improve the performance. Numerical results show that the switching control algorithm is quite promising.
1998 ◽
Vol 64
(619)
◽
pp. 1108-1115
◽
1997 ◽
Vol 122
(3)
◽
pp. 567-569
◽
2015 ◽
Vol 32
(05)
◽
pp. 1550036
◽
2015 ◽
Vol 20
(3)
◽
pp. 329-345
◽
2007 ◽
Vol 2007.20
(0)
◽
pp. 369-370
2009 ◽
Vol 11
(1)
◽
pp. 79-88
◽