DocumentCode :
18463
Title :
Stationary Fuzzy Fokker–Planck Learning for Derivative-Free Optimization
Author :
Kumar, Manoj ; Stoll, Norbert ; Thurow, Kerstin ; Stoll, Regina
Author_Institution :
Center for Life Sci. Autom., Rostock, Germany
Volume :
21
Issue :
2
fYear :
2013
fDate :
Apr-13
Firstpage :
193
Lastpage :
208
Abstract :
Stationary fuzzy Fokker-Planck learning (SFFPL) is a recently introduced computational method that applies fuzzy modeling to solve optimization problems. This study develops a concept of applying SFFPL-based computations for nonlinear constrained optimization. We consider the development of SFFPL-based optimization algorithms which do not require derivatives of the objective function and of the constraints. The sequential penalty approach was used to handle the inequality constraints. It was proved under some standard assumptions that the carefully designed SFFPL-based algorithms converge asymptotically to the stationary points. The convergence proofs follow a simple mathematical approach and invoke mean-value theorem. The algorithms were evaluated on the test problems with the number of variables up to 50. The performance comparison of the proposed algorithms with some of the standard optimization algorithms further justifies our approach. The SFFPL-based optimization approach, due to its novelty, could possibly be extended to several research directions.
Keywords :
convergence; fuzzy set theory; learning (artificial intelligence); nonlinear programming; SFFPL-based optimization algorithm; convergence proof; derivative-free optimization; fuzzy modeling; inequality constraint; mean-value theorem; nonlinear constrained optimization; objective function; sequential penalty approach; stationary fuzzy Fokker-Planck learning; Algorithm design and analysis; Computational modeling; Convergence; Least squares approximation; Optimization; Standards; Stochastic processes; Constrained optimization; convergence; derivation-free optimization; sequential penalty methods; stationary fuzzy Fokker–Planck learning (SFFPL);
fLanguage :
English
Journal_Title :
Fuzzy Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6706
Type :
jour
DOI :
10.1109/TFUZZ.2012.2204266
Filename :
6216407
Link To Document :
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