| (235)
REFERENCES
1. Ahmadzadeh, M., Golestan, Z., Vahidi, J., and Shirazi, B. (2013) “A graph
based approach for clustering ensemble of fuzzy partitions”, Journal of
mathematics and computer Science, Vol. 6, pp. 154-165.
2. Abiyev, R., Kaynak, O., Alshanableh, T., and Mamedov, F. (2011) “A type-2
neurofuzzy system based on clustering and gradient techniques applied to system
identification and channel equalization”, Journal of Applied Soft Computing, Vol.
11, pp. 1396-1406.
3. Aik, L. and Jayakumar, Y. (2008) “A study of neuro-fuzzy system in approxim-
ation based problems”, Matematika, Vol. 24, No.2, pp.113–130.
4. Agüero, J., and Vargas, A. (2007) “Calculating functions of interval type-2 fuzzy
numbers for fault current analysis”, IEEE Transactions on Fuzzy Systems, Vol. 15,
No. 1, pp. 31-40.
5. Abdennour, A. (2005) “A long horizon neuro-fuzzy predictor for mpeg video
traffic”, Journal of King Saud University, Vol. 18, pp. 161-180.
6. Abraham, A., and Peter, H. (2005) “Measuring System Design”, Oklahoma State
University, Sydenham and Richard Thorn, John Wiley and Sons, Ltd, USA.
7. Al-Gallaf, E. (2005) “Clustered based takagi-sugeno neuro-fuzzy modeling of a
multivariable nonlinear dynamic system”, Asian Journal of Control, Vol. 7, No. 2,
pp. 163-176.
8. Amo, A., Montero, J., Biging, G., and Cutello, V. (2004) “Fuzzy classification
systems”, European Journal of Operational Research, Vol. 156, pp. 495-507.
9. Abonyi J. (2003) “Fuzzy Model Identification for Control”, Birkhäuser Boston,
Springer, Science and Business Media.
10. Adeli, H., and Jiang, X. (2003) “Neuro-fuzzy logic model for freeway work zone
capacity estimation”, Journal of Transportation Engineering, Vol. 129, No. 5, pp.
484-493.
References
| (236)
11. Alimi, A. (2003) “Beta neuro-fuzzy systems”, Journal of Task Quarterly, Vol. 7,
No. 1, pp. 23-41.
12. Asif, M., and Choi, T. (2001) “Shape from focus using multilayer feed forward
neural networks”, IEEE Transactions on Image Processing, Vol. 10, No. 11, pp.
1670-1675.
13. Al-Wedyan, H., Demirli, K., and Bhat, R. (2001) “A technique for fuzzy logic
modeling of machining process”, Proceedings Joint 9th IFSA World Congress and
20th NAFIPS International Conference, Vol. 5, pp. 3021-3026.
14. Altrock, C., and Krause, B. (1993) “Fuzzy logic and neurofuzzy technologies in
embedded automotive applications”, IEEE Third International Conference on
Industrial Fuzzy Control and Intelligent Systems, pp. 55-59.
15. Belohlavek, H. and Klir, G. (2011) “Concepts and Fuzzy Logic”, Massachusetts
Institute of Technology, London, England.
16. Bansal, A. (2011) “A weighted fuzzy classifier and its application to image
processing tasks”, International Journal of Physical and Mathematical Sciences,
Vol. 8, pp. 39-44.
17. Beyhan, S., and Alci, M. (2011) “Extended fuzzy function model with stable
learning methods for online system identification”, International Journal of
Adaptive Control and Signal Processing, Vol. 25, No. 2, pp. 168–182.
18. Biglarbegian, M., Melek, W., and Mendel, J. (2011) “Design of novel interval
type-2 fuzzy controllers for modular and reconfigurable robots: theory and
experiments”, IEEE Transactions on Industrial Electronics, Vol. 58, No. 4, pp.
1371–1384.
19. Beevi, S., Sathik, M., and Senthama, K. (2010) “A robust fuzzy clustering
technique with spatial neighborhood information for effective medical image
segmentation”, International Journal of Computer Science and Information
Security, Vol. 7, No. 3, pp. 132-138.
References
| (237)
20. Burak, A., Emine, G., and Hilmi, A. (2004) “Comparison of multilayer
perceptron and adaptive neuro-fuzzy system on back calculating the mechanical
properties of flexible pavements”, ARI Technical University, Vol. 54, No. 3, pp.
66-77.
21. Babuška, R., and Verbruggen, H. (2003) “Neuro-fuzzy methods for nonlinear
system identification”, Journal of Annual Reviews in Control, Vol. 27, pp. 73–85.
22. Baraldi, A., Binaghi, E., Blonda, P., Brivio, A., and Rampini, A. (2001)
“Comparison of the multilayer perceptron with neuro-fuzzy techniques in the
estimation of cover class mixture in remotely sensed data”, IEEE Transactions on
Geoscience and Remote Sensing, Vol. 39, No. 5, pp. 994-1005.
23. Binaghi, E., Brivio, P., and Rampini, P. (1999) “A fuzzy set-based accuracy
assessment of soft classification”, Pattern Recognition Letters, Vol. 20, No. 9, pp.
935-948.
24. Babuška, R. (1998) “Fuzzy Modeling for Control”, Springer Netherlands, Kluwer
Academic Publishers, International Series in Intelligent Technologies, Vol. 12.
25. Babuska, R., and Verbruggen, H. (1996) “An overview of fuzzy modeling for
control”, Control Engineering Practice, Vol. 4, No. 11, pp. 1593-1606.
26. Bezdek, J. (1993) “A review of probabilistic, fuzzy, and neural models for pattern
recognition”, IOS Journal of Intelligent and Fuzzy Systems, Vol. 1, No. 1, pp. 1-
25.
27. Bezdek, J., and Pal, S. (1992) “Fuzzy Models for Pattern Recognition”, IEEE
Press, New York.
28. Blockley, D. (1983) “Comments on Model uncertainty in structural reliability by
ove ditlevsen”, Journal of Structure Safety, Vol. 1, pp. 233–235.
29. Bellman, R. (1961) “Adaptive Control Processes: A Guide Tour”, Princeton
University Press, Operations Research Society of America and the Institute of
Management Sciences, Princeton, NJ. Princeton, New Jersey.
References
| (238)
30. Castillo, O., and Melin, P. (2014) “Short remark on interval type-2 fuzzy sets and
intuitionistic fuzzy sets”, 18th International Conference on Intuitionistic Fuzzy
Sets, Vol. 20, No. 2, pp. 1-5.
31. Castillo, O., and Melin, P. (2012) “Recent Advances in Interval Type-2 Fuzzy
Systems”, Springer Briefs in Applied Sciences and Technology.
32. Chai, Y., Jia, L., and Zhang, Z. (2009) “Mamdani model based adaptive neural
fuzzy inference system and its application”, World Academy of Science,
Engineering and Technology, Vol. 51, pp. 845-852.
33. Castro, J., Castillo, O., Melin, P., and Díaz, A. (2008) “Building fuzzy inference
systems with a new interval type-2 fuzzy logic toolbox”, IEEE Transactions on
Computer Science, Vol. 50, pp. 104-114.
34. Coupland, S., and John, R. (2007) “Geometric type-1 and type-2 fuzzy logic
systems”, IEEE Transactions on Fuzzy Systems, Vol. 15, No. 1, pp. 3-15
35. Chopra, S., Mitra, R., and Kumar, V. (2007) “A neuro-fuzzy learning and its
application to control system”, World Academy of Science, Engineering and
Technology, Vol. 34, pp. 475-481.
36. Chen, C-H., Lin, C-T., and Lin, C-J. (2007) “A functional link-based fuzzy
neural network for temperature control”, IEEE Symposium on Foundations of
Computational Intelligence, pp. 53-58.
37. Castillo, O., Cazarez, N., and Rico, D. (2006) “Intelligent control of dynamic
systems using type-2 fuzzy logic and stability issues”, International
Mathematical, Vol. 1, No. 28, pp. 1371-1382.
38. Chang, F., and Chang, Y. (2006) “Adaptive neuro-fuzzy inference system for
prediction of water level in reservoir”, Journal of Advances in Water Resources,
Vol. 29, No. 1, pp. 1-10.
39. Casillas, J., and Cordon, O. (2003) “Interpretability Issues in Fuzzy Modeling”,
Springer-Verlag Berlin Heidelberg, Studies in fuzziness and soft computing, Vol.
128.
References
| (239)
40. Castellano, G., and Fanelli, A. (2000) “Variable selection using neural-network
models”, Neurocomputing, Vol. 31, pp. 1-13.
41. Cornelis, C., Cock, M., and Kerre, E. (2000) “The generalized modus ponens in
a fuzzy set theoretical framework: theory and application”, Springer International
Series in Engineering and Computer Science. Vol. 553, pp. 37-59.
42. Chung, I., Lin, C-F., and Lin, C-T. (2000) “A GA-based fuzzy adaptive learning
control network”, Journal of Fuzzy Sets and Systems, Vol. 112, pp. 65-84.
43. Chung, F., and Lee, T. (1996) “On fuzzy associative memory with multiple-rule
storage capacity”, IEEE Transactions on Fuzzy Systems, Vol. 4, pp. 375–384.
44. Chiu, S. (1996) “Selecting input variables for fuzzy models”, Journal of
Intelligent and Fuzzy Systems, Vol. 4, No. 4, pp. 243-256.
45. Dewangan, D., Kumar, M., and Qureshi, M. (2014) “Power system transient
stability analysis based on interval type-2 fuzzy logic controller and genetic
algorithms”, International Journal of Innovative Science Engineering and
Technology, Vol. 1, No. 4, pp. 103-120.
46. Dwivedi, R., Kumar, A., and Ghosh, S. (2012) “Study of fuzzy based classifier
parameter using fuzzy matrix”, International Journal of Soft Computing and
Engineering, Vol. 2, No. 3, pp. 358-365.
47. Dinagar, D., and Latha, K. (2012) “A note on type-2 triangular fuzzy matrices”,
International journal of Mathmatics Science and Enggnerig Applications, Vol. 6,
No. 1, pp. 207-216.
48. Doğan, E., Saltabaş, L., and Yıldırım, E. (2007) “Adaptive neuro-fuzzy
inference system application for estimating suspended sediment loads”,
International Earthquake Symposium Kocher, Vol. 5, pp. 537-540.
49. Dhlamini, S., Marwala, T., and Majozi, T. (2006) “Fuzzy and multilayer
perceptron for evaluation of HV bushings”, IEEE International Conference on
Systems, Man and Cybernetics, Vol. 2, pp. 1331-1336.
References
| (240)
50. Detlef, D. (2003) “Fuzzy data analysis with NEFCLASS”, International Journal
of Approximate Reasoning, Vol. 32, pp. 103–130.
51. Dubois, D., and Prade, H. (1988) “Representation and combination of
uncertainty with belief functions and possibility measures”, Computation
Intelligence, Black-well Publishing, Vol. 4, pp. 244-264.
52. Dubois, D., and Prade, H. (1980) “Fuzzy Sets and Systems: Theory and
Applications”, Academic Press, New York.
53. Duda, O., and Hart, P. (1973) “Pattern Classification and Scene Analysis”, John
Willey and Sons, New Yotk, Vol. 32.
54. Elmzabi, A., Bellafkih, M., and Ramdani, M. (2005) “An adaptive fuzzy
clustering approach for the network management”, International Journal of
Information Technology, Vol. 3, No. 1, pp. 12-17.
55. Emami, M., Trurk-Ssen, I., and Goldenberg, A. (1998) “Development of a
systematic methodology of fuzzy logic modeling”, IEEE Transaction on Fuzzy
Systems, Vol. 6, pp. 346–361.
56. Freitas, C., Carvalho, J., Oliveira. J., Aires, S., and Sabourin, R. (2007)
“Confusion matrix disagreement for multiple classifiers”, Springer-Verlag Berlin
Heidelberg, Lecture Notes in Computer Science, Vol. 4756, pp. 387–396.
57. Feng, G. (2006) “A survey on analysis and design of model-based fuzzy control
systems”, IEEE Transactions on Fuzzy Systems, Vol. 14, No. 5, pp. 676-697.
58. Gulia, A., Vohra, R., and Rani, P. (2014) “Liver patient classification using
intelligent techniques”, International Journal of Computer Science and
Information Technologies, Vol. 5, No. 4, pp. 5110-5115.
59. Gupta, N. (2014) “Comparative study of type-1 and type-2 fuzzy systems”,
International Journal of Engineering Research and General Science, Vol. 2, No.
4, pp. 195-198.
60. Gliwa, B., and Byrski, A. (2011) “Hybrid neuro-fuzzy classifier based on
NEFCLass model”, Journal of Computer Science, Vol. 12, pp. 115-135.
References
| (241)
61. Guan, J., Zurada, J., and Levitan, A. (2008) “An adaptive neuro-fuzzy
inference system based approach to real state property assessment”, American
Real Estate Society, Journal of Real Estate Research, Vol, 30, No. 4, pp. 395-422.
62. Galindo, J., Urrutia, A., and Piattini, M. (2006) “Fuzzy Databases: Modeling,
Design and Implementation”, Idea Group Inc., United States of America, Hershey
PA 17033.
63. Guillaume, S., and Charnomordic, B. (2004) “Generating an interpretable
family of fuzzy partitions from data”, IEEE Transactions on Fuzzy Systems, Vol.
12, No. 3, pp. 324-335.
64. Guillaume, S., and Charnomordic, B. (2001) “Generating an interpretable
family of fuzzy partitions from data”, IEEE Transactions on Fuzzy Systems, Vol.
12, No. 3, pp. 324-335.
65. Guillaume, S. (2000) “Designing fuzzy inference systems from data: an
interpretability-oriented review”, IEEE Transactions on Fuzzy Systems, Vol. 9,
No. 3, pp. 426- 443.
66. Hong-Lei, Y., Jun-Huan, P., and Ding-Xuan, Z. (2013) “Remote sensing
classify cation using fuzzy C-means clustering with spatial constraints based on
markov random field”, European Journal of Remote Sensing, Vol. 46, pp. 305-
316.
67. Hossain, M., Enamul, K., Mostafizur, R., Borhan, K., and Rafiqul, I. (2011)
“Determination of typical load profile of consumers using fuzzy C-means
clustering algorithm”, International Journal of Soft Computing and Engineering,
Vol. 1, No. 5, pp. 169-173.
68. Hassan, M. (2010) “Using swarm intelligence for improving accuracy of fuzzy
classifiers”, World Academy of Science Engineering and Technology, Vol. 44, pp.
436-443.
69. Hndoosh, R. (2010) “Using clustering for modeling monthly salary grade”, Iraqi
Journal of Statistical Sciences, Vol. 10, No. 18, pp. 297-320.
References
| (242)
70. Hndoosh, R. (2009) “The application of fuzzy logic to the modeling of product
density for children ready-made clothes”, Iraqi Journal of Statistical Sciences,
Vol. 9, No.16, pp. 161-184.
71. Hua, Y., and Tzengb, G. (2003) “Elicitation of classification rules by fuzzy data
mining”, Engineering Applications of Artificial Intelligence, Vol. 16, pp. 709-716.
72. Hu, Y., Chen, R., and Tzeng, G. (2003) “Finding fuzzy classification rules using
data mining techniques”, Pattern Recognition Letters, Vol. 24, pp. 509–519.
73. Hung, T., and Nadipuram, R. (2000) “Fuzzy Modeling and Control: Selected
Works of Sugeno”, CRC Press, Taylor and Francis Group, Inc.
74. Inyaem, U., Haruechaiyasak, C., Meesad, P., and Tran, D. (2010) “Terrorism
event classification using fuzzy inference systems”, International Journal of
Computer Science and Information Security, Vol. 7, No. 3, pp. 247- 256.
75. Ishibuchi, H., Yamamoto, T., and Nakashima, T. (2005) “Hybridization of
fuzzy GBML approaches for pattern classification problems”, IEEE Transactions
on Systems, and Cybernetics- Part B: Cybernetics, Vol. 35, No. 2, pp. 359- 365.
76. Ishibuchi, H., Nakashima, T., and Murata T. (1999) “Performance evaluation
of fuzzy classifier systems for multidimensional pattern classification problems”,
IEEE Transactions on Fuzzy Systems, Vol. 29, No. 5, pp. 601-618.
77. Jiang, J., Liou, R., and Lee, S. (2011) “A fuzzy self constructing feature
clustering algorithm for text classification”, IEEE Transactions on Knowledge and
Data Engineering, Vol. 23, No. 3, pp.335-349.
78. Jandaghi, G., Tehrani, R., Hosseinpour, D., Gholipour, R., and Shadkam, S.
(2010) “Application of fuzzy-neural networks in multi-ahead forecast of stock
price”, African Journal of Business Management, Vol. 4, pp. 903-914.
79. Juang, C., and Tsao, Y. (2008) “A self-evolving interval type-2 fuzzy neural
network with online structure and parameter learning”, IEEE Transactions on
Fuzzy Systems, Vol. 16, No. 6, PP. 1411-1424.
References
| (243)
80. Ji-lin, C., Yuan-long, H., Zong-yi, X., Li-min, J., and Zhong-zhi, T. (2006) “A
multi objective genetic-based method for design fuzzy classification systems”,
International Journal of Computer Science and Network Security, Vol. 6, No. 8A,
pp. 10-17.
81. Jain, R., and Abraham, A. (2004) “A comparative study of fuzzy classification
methods on breast cancer data”, Australasian Physics and Engineering Sciences in
Medicine, Vol. 27, No. 4, pp. 213-218.
82. Johannes, A., Setnes, M., and Abonyi, J. (2003) “Learning fuzzy classification
rules from labeled data”, Journal of Information Sciences, Vol. 150, pp. 77–93.
83. Jain, R., and Abraham, A. (2003) “A comparative study of fuzzy classifiers on
breast cancer data”, Artificial Neural Nets Problem Solving Methods, Lecture
Notes in Computer Science, Vol. 2687, pp. 512-519.
84. Jin, Y., and Sendhoff, B. (2003) “Extracting interpretable fuzzy rules from RBF
networks”, Neural Processing Letters, Vol. 17, No. 2, pp.149-164.
85. Jose, C., Neil, R., and Curt, W. (1999) “Neural and Adaptive Systems”, John
Wiley and Sons, Inc, New York.
86. Jantzen, A. (1998) “Tutorial on fuzzy logic”, Journal of Technical University of
Denmark, Automation, Technical report, No 98-E.
87. Jang, R., and Sun, C. (1995) “Neuro-fuzzy modeling and control”, The
Proceedings of the IEEE, Vol. 83, pp. 378-406.
88. Junbo, F., Fan, J., and Yan, S. (1994) “A learning rule for fuzzy
associativememories”, In Proceedings of the, IEEE International Joint Conference
on Neural Networks, Vol. 7, pp. 4273-4277.
89. Junbo, F., Fan, J., and Yan, S. (1992) “An encoding rule of fuzzy associative
memories”, IEEE Circuits and Systems Society, Vol. 3, pp. 1415-1418.
90. Khosla, A., Leena G., and Soni, M. (2014) “A BC algorithm based interval type-
2 fuzzy logic controller for an inverted pendulum”, International journal of
Intelligent Systems and Applications, Vol. 6, pp. 29-36.
References
| (244)
91. Kamel, T., and Hassan, M. (2009) “Adaptive neuro fuzzy inference system
(ANFIS) for fault classification in the transmission lines”, The Online Journal on
Electronics and Electrical Engineering, Vol. 2, pp. 164-169.
92. Kannan, S., and Ramat, S. (2008) “Fuzzy error matrix in classification
problems”, Journal of Application Math and Informatics, Vol. 26, No. 6, pp. 861 –
876.
93. Kwang, H. (2005) “First Course on Fuzzy Theory and Applications”, Springer
Science and Business Media, journal of Advances in Intelligent and Soft
Computing, Vol. 27.
94. Klir, G. (2005) “Uncertainty and Information Foundations of Generalized
Information Theory”, IEEE Press, John Wiley and Sons, Inc., Hoboken, New
Jersey, Canada.
95. Kaymak, U., and Setnes, M. (2002) “Fuzzy clustering with volume prototypes
and adaptive cluster mergi”, IEEE Transactions on Fuzzy Systems, Vol. 10, No. 6,
pp. 705-712.
96. Karnik, N., and Mendel, J. (2001) “Centroid of type-2 fuzzy sets”, International
Journal of Information Sciences, Vol. 132, pp. 195-220.
97. Karnik, N., and Mendel, J. (2001) “Operations on type-2 fuzzy sets”, Fuzzy Sets
and Systems, Vol. 122, pp. 327-348.
98. Kim, T., and Yuh, J. (2001) “A novel neuro-fuzzy controller for autonomous
underwater vehicles”, IEEE International Conference on Robotics and
Automation, Vol. 3, pp. 2350-2355.
99. Karnik, N., Mendel, J., and Liang, Q. (1999) “Type-2 fuzzy logic systems”,
IEEE Transactions on Fuzzy Systems, Vol. 7, No. 6, PP. 643-658.
100. Karnik, N., and Mendel, J. (1998) “Introduction to type-2 fuzzy logic systems”,
IEEE International Conference on Fuzzy Systems Proceedings, pp. 915-920.
101. Klir, G., and Folger, T. (1988) “Fuzzy Sets Uncertainty and Information”,
Prentice Hall, Englewood, Cliffs, NJ.
References
| (245)
102. Liu, H., Jeng, B., Yih, J., and Yu, Y. (2009) “Fuzzy C-means algorithm based on
standard mahalanobis distances”, Conference Proceeding of the International
Symposium on Information Processing, pp. 422-427.
103. Lian, K., and Liou, J. (2006) “Output tracking control for fuzzy systems via
output feedback designs”, IEEE Transactions on Fuzzy Systems, Vol. 14, No. 5,
pp. 628-639.
104. Leng, G., Mcginnity, T., and Prasad, G. (2006) “Design for self-organizing
fuzzy neural networks based on genetic algorithms”, IEEE Transactions on Fuzzy
Systems, Vol. 14, No. 6, pp. 755-766.
105. Lin, J., Cheng, C., Sun, Y., and Chau, K. (2005) “Long-term prediction of
discharges in man-wan hydropower uses adaptive-network-based fuzzy inference
systems models”, Advances in Natural Computation, Lecture Notes in Computer
Science, Vol. 3612, pp. 1152-1161.
106. Lynch, C., Hagras, H., and Callaghan, V. (2005) “Embedded type-2 FLC for
the speed control of marine and traction diesel engines”, Proceedings of the 14th
IEEE International Conference on Fuzzy Systems, Vol. 5, pp. 347-353.
107. Lee, C., Hong, J., Lin, Y., and Lai, W. (2003) “Type-2 fuzzy neural network
systems and learning”, International Journal of Computational Cognition, Vol. 1,
No. 4, PP. 79–90.
108. Liang, Q. and Mendel, J. (2000) “Interval type-2 fuzzy logic systems: theory and
design,” IEEE Transactions on Fuzzy Systems, Vol. 8, No. 5, pp. 535-550.
109. Liu, P. (1999) “The fuzzy associative memory of max-min fuzzy neural networks
with threshold”, Journal of Fuzzy Sets and Systems, Vol. 107, pp. 147-157.
110. Meshram, R. (2014) “Tracking and formation of wheeled mobile robot using
fuzzy logic”, International Journal of Inventive Engineering and Sciences, Vol. 2,
No. 2, pp. 8-22.
References
| (246)
111. Molaeezadeh, S., and Moradi, M. (2013) “A function representation for non-
uniform type-2 fuzzy sets: theory and design”, International Journal of
Approximate Reasoning, Vol. 54, pp. 273-289.
112. Miguel, P., Carlos, L., Javier, F., Edurne, B., and Humberto, B. (2013)
“Interval type-2 fuzzy sets constructed from several membership functions:
application to the fuzzy thresholding algorithm”, IEEE Transactions on Fuzzy
Systems, Vol. 21, No. 2, PP. 230-244.
113. Morales, O., Mendez, J., and Devia, J. (2011) “Centroid of an interval type-2
fuzzy set re-formulation of the problem”, Applied Mathematical Sciences, Vol. 6,
No. 122, pp. 6081-6086.
114. Mendel, J. (2010) “A quantitative comparison of interval type-2 and type-1 fuzzy
logic systems: first results”, IEEE World Congress on Computational Intelligence,
Barcelona, Spain, pp. 18-23.
115. Moavenian, M., and Khorrami, H. (2010) “A qualitative comparison of artificial
neural networks and support vector machines in ECG arrhythmias classification”,
Expert Systems with Applications, Vol. 37, pp. 3088-3093.
116. Mendel, J., Liu, F., and Zhai, D. (2009) “α-Plane representation for type-2 fuzzy
sets: theory and applications,” IEEE Transactions on Fuzzy Systems, Vol. 17, No.
5, pp. 1189-1207.
117. Mendel, J. (2009) “On answering the question, ‘Where do i start in order to solve
a new problem involving interval type-2 fuzzy sets?’”, International Journal of
Information Sciences, Vol. 179, pp. 3418-3431.
118. Marza, V., and Seyyedi, A. (2008) “Estimating development time of software
projects using a neuro fuzzy approach”, World Academy of Science, Engineering
and Technology, Vol. 46, pp. 575-579.
119. Moein, S., Monadjemi, S., and Moallem, P. (2008) “A novel fuzzy-neural based
medical diagnosis system”, World Academy of Science, Engineering and
Technology, Vol. 37, pp. 443-459.
References
| (247)
120. Mendel, J. (2007) “Type-2 fuzzy sets and systems: an overview,” IEEE
computation intelligence magazine, Vol. 2, No. 1, pp. 20-29.
121. Mendel, J. (2007) “Advances in type-2 fuzzy sets and systems”, International
Journal of Information Sciences, Vol. 177, pp. 84-110.
122. Meilă, M. (2007) “Comparing clusterings an information based distance”, Journal
of Multivariate Analysis, Vol. 98, No. 5, pp. 873-895.
123. Milasi, R., Jamali, M., and Lucas, C. (2007) “Intelligent washing machine: a
bioinspired and multi-objective approach”, International Journal of Control,
Automation, and Systems, Vol. 5, No. 4, pp. 436-443.
124. Mendel, J., John, R. and Liu, F. (2006) “Interval type-2 fuzzy logic systems
made simple”, IEEE Transactions on Fuzzy Systems, Vol. 14, No. 6, pp. 808-821.
125. Mitchell, H. (2006) “Ranking type-2 fuzzy numbers”, IEEE Transactions on
Fuzzy Systems, Vol. 14, No. 2, pp. 287-294.
126. Mohagheghi, S., Venayagamoorthy, G., and Harley, R. (2006) “Adaptive critic
designs based neuro-fuzzy controller for a static compensator in a multimachine
power system”, IEEE Transactions on Power Systems, Vol. 21, No. 4, pp. 1744-
1754.
127. Mendel, J. (2004) “Computing derivatives in interval type-2 fuzzy logic
systems”, IEEE Transactions on Fuzzy Systems, Vol. 12, No. 1, pp. 84-98.
128. Melgarejo, M., Reyes, A., and Garcia, A. (2004) “Computational model and
architectural proposal for a hardware type-2 fuzzy system”, Proceedings of the 2nd
IASTED International Conference, Neural Networks and Conputational
Intelligence, pp. 279-284.
129. Mendel, J. (2003) “Type-2 fuzzy sets: some questions and answers”, IEEE Neural
Networks Society, Vol. 8, pp. 10-13.
130. Mendel, J. (2002) “An architecture for making judgments using computing with
words”, International Journal of Applied Mathematics and Computer Science,
Vol. 12, No. 3, pp. 325–335.
References
| (248)
131. Mendel, J., and John, R. (2002) “Type-2 fuzzy sets made simple”, IEEE
Transactions on Fuzzy Systems, Vol. 10, No. 2, pp. 117- 127.
132. Mendel, J. (2001) “Uncertain Rule-Based Fuzzy Logic Systems: Introduction and
New Directions”, Prentice Hall PTR, Upper Saddle River NJ.
133. Mizumoto, M., and Tanaka, K. (1976) “Some properties of fuzzy sets of type-
2”, Journal of Information and Control, Vol. 31, pp. 312-340.
134. Nurnadiah, Z., and Lazim, A. (2012) “A new weight of interval type-2 fuzzy
rasch model”, Applied Mathematical Sciences, Vol. 6, No. 75, pp. 3705-3722.
135. Nakashimaa, T. (2007) “A weighted fuzzy classifier and its application to image
processing tasks”, Journal of Fuzzy Sets and Systems, Vol. 158, pp. 284-294.
136. Nayak, P., Sudheer, K., Rangan, D., and Ramasastri, K. (2004) “A neuro-
fuzzy computing technique for modeling hydrological time series”, Journal of
Hydrology, Vol. 291, pp. 52-66.
137. Nauck, D. (2003) “Fuzzy data analysis with NEFClass”, International Journal of
Approximate Reasoning, Vol. 32, pp. 103-130.
138. Nauck, D., and Kruse, R. (1998) “How the learning of rule weights affects the
interpretability of fuzzy systems”, IEEE International Conference on Fuzzy
Systems, pp. 1235-1240.
139. Ondrej, L., and Milos, M. (2010) “Importance sampling based defuzzification
for general type-2 fuzzy sets”, IEEE World Congress on Computational
Intelligence, Vol. 10, pp. 1943-1949.
140. Ozen, T., and Garibaldi, J. (2003) “Investigating adaptation in type-2 fuzzy
logic systems applied to umbilical acid-base assessment”, Proceedings of the 2003
European Symposium on Intelligent Technologies, pp. 289-294.
141. Pagola, M., Lopez-Molina, C., Fernandez, J., and Barrenechea, E. (2013)
“Interval type-2 fuzzy sets constructed from several membership functions:
application to the fuzzy thresholding algorithm”, IEEE Transactions on Fuzzy
Systems, Vol. 21, No. 2, pp. 230-244.
References
| (249)
142. Plamen, P., and Zhou, X. (2008) “Evolving fuzzy-rule-based classifiers from
data streams”, IEEE Transactions on Fuzzy Systems, Vol. 16, No. 6, pp. 1462-
1475.
143. Priyono, A., Ridwan, M., Alias, A., Rahmat, O., Hassan, A., and Alauddin, M.
(2005) “Generation of fuzzy rules with subtractive clustering”, Journal of
Technology, Vol. 43, pp.143–153.
144. Piegat, A. (2001) “Fuzzy Modeling and Control”, Physica-Verlag Heidelberg,
studies in fuzziness and soft computing, Vol. 69.
145. Pedrycz, W. (1995) “Fuzzy Sets Engineering”, CRC Press, Boca Raton, Florida,
USA.
146. Rumar, R., and Arumugam, S. (2011) “A neuro-fuzzy integrated system for
non-linear buck and quasi-resonant buck converter”, European Journal of
Scientific Research, Vol. 51, No. 1, pp. 66-78.
147. Ren, Q., Baron, L., and Balazinski, M. (2006) “Type-2 takagi-sugeno-kang
fuzzy logic modeling using subtractive clustering”, Proceedings of 25th
International Conference of the North American Fuzzy Information Society,
Montreal, Canada, pp. 1-12.
148. Ross, T. (2004) “Fuzzy Logic with Engineering Applications”, John Wiley and
Sons, Ltd., Amazon Digital Services, Inc.
149. Roubos, J., Setnes, M., and Abonyi, J. (2003) “Learning fuzzy classification
rules from labeled data”, Journal of Information Sciences, Vol. 150, pp. 77-93.
150. Ruan, D., and Wang, P. (1997) “Intelligent Hybrid Systems: Fuzzy Logic, Neural
Network and Genetic Algorithms”, Springer, Kluwer Academic Publishers.
151. Rojas, R. (1996) “Neural Networks: A Systematic Introduction”, Springer-Verlag,
Berlin, New York.
152. Sug, H. (2012) “Improving the prediction accuracy of liver disorder disease with
oversampling”, World Scientific and Engineering Academy and Society, Applied
Mathematics in Electrical and Computer Engineering, Vol. 64, pp. 331-335.
References
| (250)
153. Sug, H. (2012) “Performance comparison of different over-sampling rates of
decision trees for the class of higher error rate in the liver data set”, International
Journal of Mathematics and Computers in Simulation, Vol. 6, No. 2, pp. 282-289.
154. Sowmya, B., and Sheelarani, B. (2011) “Land cover classification using
reformed fuzzy C-means”, Indian Academy of Sciences, Vol. 36, pp. 153-165.
155. Salazar, O., Serrano, H. and Soriano, J. (2011) “Centroid of an interval type-2
fuzzy set: continuous vs. discrete”, Ingenieria, Universidad Distrital Francisco
José De Caldas, Vol. 16, No. 2, pp. 67-78.
156. Samandar, A. (2011) “A model of adaptive neural-based fuzzy inference system
(ANFIS) for prediction of friction coefficient in open channel flow”, Academic
Journals Scientific Research and Essays, Vol. 6, No. 5, pp. 1020-1027.
157. Santiago, R., and Maeder, C. (2011) “Linguistic variables of type-n a
mathematical model”, Matemática Aplicada e Computacional, Vol. 12, No. 1, pp.
21-30.
158. Singh, M., Sharma, M., and Kumar, S. (2009) “Conjugate descent formulation
of back propagation error in feed forward neural network”. ORION: Journal of the
Operations Research Society of South Africa, Vol. 25, pp. 69-86.
159. Starczewski, J. (2009) “Efficient triangular type-2 fuzzy logic systems”,
International Journal of Approximate Reasoning, Vol. 50, pp. 799–811.
160. Sivanandam, S., and Deepa, S. (2008) “Principal of Soft Computing”, John
Wiley and Sons, Wiley India Pvt Ltd.
161. Saremi, H., and Ali-Montazer, G. (2008) “An application of type-2 fuzzy
notions in website structures selection: utilizing extended TOPSIS method”,
WSEAS Transactions on Computers, Vol. 7, No. 1, PP. 8-15.
162. Sadaaki, M., Youhei, K., and Kenta, A. (2008) “Algorithms for sequential
extraction of clusters by possibilistic method and comparison with mountain
clustering”, Journal of Advanced Computational Intelligence and Intelligent
Informatics, Vol. 12, No. 5, pp. 448-449.
References
| (251)
163. Stephen, V. (2007) “Estimation of fuzzy error matrix accuracy measures under
stratified random sampling”, Photogrammetric Engineering and Remote Sensing,
Vol. 73, No. 2, pp. 165-173.
164. Stehman, S., Arora, M., Kasetkasem, T., and Varshney, P. (2007) “Estimation
of fuzzy error matrix based accuracy measures for soft classification and their
variances under stratified random sampling”, Photogrammetric Engineering and
Remote Sensing, Vol. 73, pp. 165-174.
165. Shyamal, A., and Pal, M. (2007) “Triangular fuzzy matrices”, Iranian Journal of
Fuzzy Systems, Vol. 4, No. 1, pp. 75-87.
166. Spiros, V., Amaryllis, T., Vasilis, A., Theofilos, P., Kostas, C., and Stefanos,
D. (2005) “Emotion recognition through facial expression analysis based on a
neuro-fuzzy network”, Journal of Neural Networks, Vol. 18, No. 4, pp. 423-435.
167. Sun, F., Sun, Z., Li, L., and Li, H. (2003) “Neuro-fuzzy adaptive control based
on dynamic inversion for robotic manipulators”, Journal of Fuzzy Sets and
Systems, Vol. 134, pp. 117–133.
168. Simon, D. (2002) “Training fuzzy systems with the extended Kalman filter”,
Journal of Fuzzy Sets and Systems, Vol. 132, No. 2, pp. 189-199.
169. Stylios, C., Groumpos, P., and Georgopoulos, V. (1999) "A fuzzy cognitive
maps approach to process control systems", Journal of Advanced Computational
Intelligence, Vol. 3, No. 5, pp. 1-9.
170. Setnes, M., Babuska, R., and Verbruggen, H. (1998) “Transparent fuzzy
modeling”, International Journal of Human-Computer Studies, Vol. 49, No. 2, pp.
159-179.
171. Svozil, D., Kvasni, V., and Pospichal, J. (1997) “Introduction to multi-layer feed
forward neural networks”, Chemometrics and Intelligent Laboratory Systems, Vol.
39, pp. 43-62.
References
| (252)
172. Shi, Y., Yubazaki, N., and Otani, M. (1996) “A method of generating fuzzy
rules based on the neuro-fuzzy learning algorithm”, Journal of Japan Society for
Fuzzy Theory and System, pp. 695-705.
173. Shing, J., and Jang, R. (1993) “ANFIS: adaptive network-based fuzzy inference
system”, IEEE Transactions on Systems, Man, and Cybernetics, Vol. 23, No. 3,
pp. 665-685.
174. Sugeno, M., and Tanaka, K. (1991) “Successive identification of a fuzzy model
and its application to prediction of a complex system”, Fuzzy Sets and Systems,
Vol. 42, pp. 315–334.
175. Tron, E., and Margaliot, M. (2004) “Mathematical modeling of observed natural
behavior: a fuzzy logic approach”, Journal of Fuzzy Sets and Systems, Vol. 146,
No., 3, pp. 437-450.
176. Tanaka, K., and Mizumoto, M. (1969) “Some considerations on fuzzy
automata”, Journal of Computer System Science, Vol. 3, pp. 409-422.
177. Wang, S., Dou, J., and Liu, Y. (2014) “Prediction of chaotic time series based on
interval type-2 TS fuzzy system”, Journal of Computational Information Systems,
Vol. 10, pp. 5403–5412.
178. Wu, D., Mendel, J., and Coupland, S. (2012) “Enhanced interval approach for
encoding words into interval type-2 fuzzy sets and its convergence analysis”,
IEEE Transactions on Fuzzy Systems, Vol. 20, No. 3, pp. 499-513.
179. Wagner, C., and Hagras, H. (2010) “Toward general type-2 fuzzy logic systems
based on zslices”, IEEE Transactions on Fuzzy Systems, Vol. 18, No. 4, pp. 637-
660.
180. Wu, H., and Mendel, J. (2007) “Classification of battlefield ground vehicles
using acoustic features and fuzzy logic rule-based classifiers”, IEEE Transactions
on Fuzzy Systems, Vol. 15, No. 1, pp. 56–72.
References
| (253)
181. Wu, D., and Tan, W. (2006) “Genetic learning and performance evaluation of
interval type-2 fuzzy logic controllers”, Engineering Applications of Artificial
Intelligence, Vol. 19, pp. 829-841.
182. Wu, H., and Mendel, J. (2005) “Multi-category classification of ground vehicles
based on the acoustic data of multiple terrains using fuzzy logic rule-based
classifiers”, Proceedings of SPIE Unattended Ground Sensor Technologies and
Applications, Vol. 5796, pp. 28-39.
183. Wu, H. and Mendel, J. (2002) “Uncertainty bounds and their use in the design of
interval type-2 fuzzy logic systems”, IEEE Transactions on Fuzzy Systems, Vol.
10, No. 5, pp. 622-639.
184. Wang, L., and Wan, F. (2001) “Structured neural networks for constrained
model predictive control”, Automatica, Vol. 37, No. 8, pp. 1235-1243.
185. Woo, K., Wang, L., Lewis, F., and Li, Z. (1998) “A fuzzy system compensator
for backlash”, Proceedings IEEE International Conference on Robotics and
Automation, Vol. 1, pp. 181-186.
186. Wang, L. (1998) “Stable and optimal fuzzy control of linear systems”, IEEE
Transactions on Fuzzy Systems, Vol. 6, No. 1, pp. 137-143.
187. Wang, L. (1997) “A Course in Fuzzy Systems and Control”, Prentice-Hall
International, Inc., Upper Saddle River, NJ, USA.
188. Wang, L., and Mendel, J. (1996) “Stable adaptive fuzzy controllers with
application to inverted pendulum tracking”, IEEE Transactions on Systems, Man
and Cybernetics, Vol. 26, No. 5, pp. 677-691.
189. Wang, L. (1995) “Design and analysis of fuzzy identifiers of nonlinear dynamic
systems”, IEEE Transactions on Automatic Control, Vol. 40, No. 1, pp. 11-23.
190. Wang, L. (1994) “Adaptive Fuzzy Systems and Control: Design and Stability
Analysis”, Prentice-Hall, Inc., Upper Saddle River, NJ, USA.
191. Wang, L. (1993) “Training of fuzzy logic systems using nearest neighborhood
clustering”, IEEE Second International Conference on Fuzzy Systems, pp. 13-17.
References
| (254)
192. Wang, L., and Mendel, J. (1992) “Generating fuzzy rules by learning from
examples”, IEEE Transactions on Systems, Man and Cybernetics, Vol. 22, No. 6,
pp. 1414-1427.
193. Yeh, C., Jeng, W., and Lee, S. (2011) “An enhanced type-reduction algorithm for
type-2 fuzzy sets”, IEEE Transactions on Fuzzy Systems, Vol. 19, No. 2, PP. 227-
240.
194. Yang, P., Zhu, Q., and Zhong, X. (2009) “Subtractive clustering based RBF
neural network model for outlier detection”, Journal of Computers, Vol. 4, No. 8,
pp. 755-762.
195. Yager, R., and Filev, D. (1994) “Generation of fuzzy rules by mountain
clustering”, Journal of Intelligent Fuzzy System, Vol. 2, pp.267-278.
196. Yager, R., and Filev, D. (1994) “Template-based fuzzy systems modeling”,
Journal of Inteligent Fuzzy System, Vol. 2, No. 1, pp. 39–54.
197. Zadehbagheri, O., Eskandari, H., Rezazadeh, A., and Sedighizadeh, M.
(2014) “Humidity process controlling using fuzzy type-1 and type-2 with PID
controller”, International Journal on Technical and Physical Problems of
Engineering, Vol. 6, No. 2, pp. 117-121.
198. Zakaria, R. (2013) “On defining complex uncertainty data points by type-2 fuzzy
number: two specials cases”, International Journal of Mathmatical Analysis, Vol.
7, No. 26, PP. 1285-1300.
199. Zhang, Z., and Zhang, S. (2012) “Type-2 fuzzy soft sets and their applications in
decision making”, Hindawi Publishing Corporation Journal of Applied
Mathematics, Vol. 20, pp. 1-35.
200. Zarandi, M., Nejad, F., and Zakeri, H. (2012) “A Type-2 Fuzzy Model Based on
Three Dimensional Membership Functions for Smart Thresholding in Control
Systems”, INTECH Open Access Publisher.
201. Zeng, J., Xie, L., and Liu, Z. (2008) “Type-2 fuzzy Gaussian mixture models”,
Journal of the Pattern Recognition Society, Vol. 41, pp. 3636-3643.
References
| (255)
202. Zhang, h., Lun, S., and Liu, D. (2007) “Fuzzy H filter design for a class of
nonlinear discrete-time systems with multiple time delays”, IEEE Transactions on
Fuzzy Systems, Vol. 15, No. 3, pp. 453- 469.
203. Zadeh, L.A. (2005) “Toward a generalized theory of uncertainty (GTU) an
outline”, Journal of Information Sciences, Vol. 172, No. 2, pp. 1–40.
204. Zhang, H., Liao, X., and Yu, J. (2005) “Fuzzy modeling and synchronization of
hyperchaotic systems”, Journal of Chaos, Solitons and Fractals, Vol. 26, pp. 835-
843.
205. Zhang, L., Liu, C., Davis, C., and Solomon, D. (2004) “Fuzzy classification of
ecological habitats from fia data”, Society of American Forestry, Forest Science,
Vol. 50, No. 1, pp. 117-127.
206. Zhang, G. (2000) “Neural networks for classification: a survey”, IEEE
Transactions on Systems, Man, and Cybernetics-Part C: Applications and
Reviews, Vol. 30, No. 4, pp. 451-462.
207. Zadeh, L. (1996) “Fuzzy logic computing with works”, IEEE transactions on
fuzzy systems, Vol. 4, No. 2, pp. 103-111.
208. Zadeh, L. (1975) “The conception of a linguistic variable and its application in
approximate reasoning”, Information Science, Vol. 8, pp. 199-249.
209. Zadeh, L., Fuk, K., Tanaka, K., and Shimura, M. (1975) “Fuzzy Sets and Their
Applications to Cognitive and Decision Processes”, Academic Press, Inc., New
York.
210. Zadeh, L. (1968) “Fuzzy algorithm”, Information and Control, Vol. 12, pp. 94-102.
211. Zadeh, L. (1965) “Fuzzy sets”, Information and Control, Vol. 8, pp. 338-353.