References
- M. Guven and K. Passino, Avoiding exponential parameter growth in fuzzy systems, IEEE T Fuzzy Syst 9(1) (2001) 194–199.
- Y. Kim Y, S. Ahn and W. Kwon, Computational complexity of general fuzzy logic control and its simplification for a loop controller, Fuzzy Set Syst 111 (2000) 215–224.
- B. Lazzerini and F. Marcelloni, Reducing computation overhead in MISO fuzzy systems, Fuzzy Set Syst 113 (2000) 485–496.
- N. Pal, V. Eluri and G. Mandal, Fuzzy logic approaches to structure preserving dimensionality reduction, IEEE T Fuzzy Syst 10(3) (2000) 277–286.
- A. Gegov, Distributed Fuzzy Control of Multivariable Systems, (Kluwer, Dordrecht, 1996).
- M. Gupta, J. Kiszka and G. Trojan, Multivariable structure of fuzzy control systems, IEEE T Syst Man Cyb 16(5) (1986) 638–655.
- F. Wan, H. Shang, L. Wang L and Y. Sun, How to determine the minimum number of fuzzy rules to achieve given accuracy: a computational geometric approach to SISO case, Fuzzy Set Syst 150 (2005) 199–209.
- N. Xiong and L. Litz, Reduction of fuzzy control rules by means of premise learning – method and case study, Fuzzy Set Syst 132 (2002) 217–231.
- H. Roubos and M. Setnes, Compact and transparent fuzzy models and classifiers through iterative complexity reduction, IEEE T Fuzzy Syst 9(4) (2001) 516–524.
- M. Setnes, R. Babuska and H. Verbruggen, Rule-based modelling: precision and transparency, IEEE T Syst Man Cyb 28(1) (1998) 165–169.
- V. Lacrose, Complexity Reduction of Fuzzy Controllers: Application to Multivariable Control ( PhD Thesis, Toulouse Laboratory for Systems Analysis and Architecture, 1997).
- M. Jamshidi, Large Scale Systems: Modelling, Control and Fuzzy Logic, (Prentice Hall, Upper Saddle River, 1997).
- Y. Yam, P. Baranyi and C. Yang, Reduction of fuzzy rule base via singular value decomposition, IEEE T Fuzzy Syst 7(2) (1999) 120–132.
- C. Tao, Comments on reduction of fuzzy rule base via singular value decomposition, IEEE T Fuzzy Syst 9(4) (2001) 675–676.
- W. Combs and J. Andrews, Combinatorial rule explosion eliminated by a fuzzy rule configuration, IEEE T Fuzzy Syst 6(1) (1998) 1–11.
- J. Mendel and Q. Liang, Comments on combinatorial rule explosion eliminated by a fuzzy rule configuration, IEEE T Fuzzy Syst 7(3) (1999) 369–371.
- S. Chen, F. Yu and H. Chung, Decoupled fuzzy controller design with single-input fuzzy logic, Fuzzy Set Syst 129 (2002) 335–342.
- A. Gegov and M. Frank, Hierarchical fuzzy control of multivariable systems, Fuzzy Set Syst 72 (1995) 299–310.
- S. Mollov, Fuzzy Control of Multiple-input Multiple-output Processes ( PhD Thesis, Delft University of Technology, 2002)
- A. Gegov and M. Frank, Decomposition of multivariable systems for distributed fuzzy control, Fuzzy Set Syst 73 (1995) 329–340.
- C. Xu, Linguistic decoupling control of fuzzy multivariable processes, Fuzzy Set Syst 44 (1991) 209–217.
- C. Xu and Y. Lu, Decoupling in fuzzy systems: a cascade compensation approach, Fuzzy Set Syst 29 (1989) 177–185.
- O. Huwendiek and W. Brockmann, Function approximation with decomposed fuzzy systems, Fuzzy Set Syst 101 (1999) 273–286.
- M. Joo and J. Lee, Universal approximation by hierarchical fuzzy system with constraints on the fuzzy rule, Fuzzy Set Syst 130 (2002) 175–188.
- M. Joo and J. Lee, A class of hierarchical fuzzy systems with constraints on the fuzzy rules, IEEE T Fuzzy Syst 13(2) (2002) 194–203.
- M. Lee, H. Chung and F. Yu, Modelling of hierarchical fuzzy systems, Fuzzy Set Syst 138 (2003) 343–361.
- G. Raju, J. Zhou and R. Kisner, Hierarchical fuzzy control, Int J Control 54(5) (1991) 1201–1216.
- L. Wang, Analysis and design of hierarchical fuzzy systems, IEEE T Fuzzy Syst 7(5) (1999) 617–624.
- J. Jang, C. Sun and E. Mizutani, Neuro-fuzzy and Soft Computing: A Computational Approach to Learning and Machine Intelligence, (Prentice Hall, Upper Saddle River, 1997).
- J. Yan, M. Ryan and J. Power, Using Fuzzy Logic, (Prentice Hall, New York, 1994).
- A. Gegov, Complexity Management in Fuzzy Systems, (Springer, Berlin, 2007).
- M. Negnevitsky, Artificial Intelligence: A Guide to Intelligent Systems, (Pearson Education, Harlow, 2002).
- T. Ross, Fuzzy Logic with Engineering Applications, (Wiley, Chichester, 2004).