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      KCI등재 SCOPUS

      FCM기반 퍼지추론 시스템의 구조 설계 = WLSE 및 LSE의 비교 연구

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      https://www.riss.kr/link?id=A82324309

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      다국어 초록 (Multilingual Abstract)

      In this study, we introduce a new architecture of fuzzy inference system. In the fuzzy inference system, we use Fuzzy C-Means clustering algorithm to form the premise part of the rules. The membership functions standing in the premise part of fuzzy ru...

      In this study, we introduce a new architecture of fuzzy inference system. In the fuzzy inference system, we use Fuzzy C-Means clustering algorithm to form the premise part of the rules. The membership functions standing in the premise part of fuzzy rules do not assume any explicit functional forms, but for any input the resulting activation levels of such radial basis functions directly depend upon the distance between data points by means of the Fuzzy C-Means clustering. As the consequent part of fuzzy rules of the fuzzy inference system (being the local model representing input output relation in the corresponding sub-space), four types of polynomial are considered, namely constant, linear, quadratic and modified quadratic. This offers a significant level of design flexibility as each rule could come with a different type of the local model in its consequence. Either the Least Square Estimator (LSE) or the weighted Least Square Estimator (WLSE)-based learning is exploited to estimate the coefficients of the consequent polynomial of fuzzy rules. In fuzzy modeling, complexity and interpretability (or simplicity) as well as accuracy of the obtained model are essential design criteria. The performance of the fuzzy inference system is directly affected by some parameters such as e.g., the fuzzification coefficient used in the FCM, the number of rules(clusters) and the order of polynomial in the consequent part of the rules. Accordingly we can obtain preferred model structure through an adjustment of such parameters of the fuzzy inference system. Moreover the comparative experimental study between WLSE and LSE is analyzed according to the change of the number of clusters(rules) as well as polynomial type. The superiority of the proposed model is illustrated and also demonstrated with the use of Automobile Miles per Gallon(MPG), Boston housing called Machine Learning dataset, and Mackey-glass time series dataset.

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      목차 (Table of Contents)

      • Abstract
      • 1. 서론
      • 2. FCM기반 퍼지추론 시스템의 구조
      • 3. FCM기반 퍼지추론 시스템의 학습 알고리즘
      • 4. 실험 및 결과
      • Abstract
      • 1. 서론
      • 2. FCM기반 퍼지추론 시스템의 구조
      • 3. FCM기반 퍼지추론 시스템의 학습 알고리즘
      • 4. 실험 및 결과
      • 5. 결론
      • 감사의 글
      • 참고문헌
      • 저자소개
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      참고문헌 (Reference)

      1 Cheng-Jian Lin, "The design of neuro-fuzzy networks using particle swarm optimization and recursive singular value decomposition" 71 (71): 297-310, 2009

      2 S. Abbasbandy, "Numerical solution of a system of fuzzy polynomial by fuzzy neural network" 178 (178): 1948-1960, 2008

      3 W. Pedrycz, "Linguistic models as a framework of user-centric system modeling" 36 (36): 727-745, 2006

      4 A. Staiano, "Improving RBF networks performance in regression tasks by means of a supervised fuzzy clustering Automatic structure and parameter" 69 : 1570-1581, 2006

      5 Jeoung-Nae Choi, "Identification of fuzzy relation models using hierarchical fair competition-based parallel genetic algorithms and information granulation" 33 (33): 2791-2807, 2009

      6 Sung-Kwun Oh, "Hybrid fuzzy set-based polynomial neural networks and their development with the aid of genetic optimization and information granulation" 9 (9): 1068-1089, 2009

      7 Sung-Kwun Oh, "Hybrid fuzzy set-based polynomial neural networks and their development with the aid of genetic optimization and information granulation" 9 (9): 1068-1089, 2009

      8 L.A Zadeh, "Fuzzy sets" 8 : 338-353, 1965

      9 Ho-Sung Park, "Evolutionary design of hybrid self-organizing fuzzy polynomial neural networks with the aid of information granulation" 33 (33): 830-846, 2007

      10 Mahmut Firat, "Comparative analysis of fuzzy inference systems for water consumption time series prediction" 374 (374): 235-241, 2009

      1 Cheng-Jian Lin, "The design of neuro-fuzzy networks using particle swarm optimization and recursive singular value decomposition" 71 (71): 297-310, 2009

      2 S. Abbasbandy, "Numerical solution of a system of fuzzy polynomial by fuzzy neural network" 178 (178): 1948-1960, 2008

      3 W. Pedrycz, "Linguistic models as a framework of user-centric system modeling" 36 (36): 727-745, 2006

      4 A. Staiano, "Improving RBF networks performance in regression tasks by means of a supervised fuzzy clustering Automatic structure and parameter" 69 : 1570-1581, 2006

      5 Jeoung-Nae Choi, "Identification of fuzzy relation models using hierarchical fair competition-based parallel genetic algorithms and information granulation" 33 (33): 2791-2807, 2009

      6 Sung-Kwun Oh, "Hybrid fuzzy set-based polynomial neural networks and their development with the aid of genetic optimization and information granulation" 9 (9): 1068-1089, 2009

      7 Sung-Kwun Oh, "Hybrid fuzzy set-based polynomial neural networks and their development with the aid of genetic optimization and information granulation" 9 (9): 1068-1089, 2009

      8 L.A Zadeh, "Fuzzy sets" 8 : 338-353, 1965

      9 Ho-Sung Park, "Evolutionary design of hybrid self-organizing fuzzy polynomial neural networks with the aid of information granulation" 33 (33): 830-846, 2007

      10 Mahmut Firat, "Comparative analysis of fuzzy inference systems for water consumption time series prediction" 374 (374): 235-241, 2009

      11 Aboozar Khajeh, "Appplication of adaptive neuro-fuzzy inference system for solubility prediction of carbon dioxide in polymers" 36 (36): 5728-5732, 2009

      12 Cheng-jian Lin, "An efficient immune-based symbiotic particle swarm optimization learning algorithm for TSK-type neuro-fuzzy networks design" 159 (159): 2890-2909, 2008

      13 J.S. Roger Jang, "ANFIS: Adaptive-Network-based Fuzzy Inference System" 23 (23): 665-685, 1993

      14 Qiuming Zhu, "A global learning algorithm for a RBF network" 12 (12): 527-540, 1999

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      학술지 이력

      학술지 이력
      연월일 이력구분 이력상세 등재구분
      2010-10-01 평가 학술지 통합(등재유지)
      2007-01-01 평가 학술지 통합(기타) KCI등재
      2001-01-01 평가 등재학술지 유지(등재유지) KCI등재
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