TY - GEN
T1 - A modified version of Sugeno-Yasukawa modeler
AU - Hadad, Amir H.
AU - Gedeon, Tom
AU - Shabazi, Saeed
AU - Bahrami, Saeed
PY - 2008
Y1 - 2008
N2 - One of the most significant steps in fuzzy modeling of a complex system is Structure Identification. Efficient structure identification requires good approximation of the effective input data. Misclassification of effective input data can significantly degrade the efficiency of the inference of the fuzzy model. In this paper we present a modification to the Sugeno-Yasukawa modeler [1] to improve structure identification by increasing the accuracy of effective input data detection. We improved Sugeno-Yasukawa Modeler by modifying the algorithm in two ways. Firstly, we used a new Trapezoid Approximation method based on [2] to improve estimation of membership functions. Secondly we change the modeling process of modeling. There exist some intermediate models in the Sugeno-Yasukawa modeling process, a combination of which will result in the final fuzzy model of the system. In the original modeling process, parameter identification is only done for the final fuzzy model. By doing the parameter identification for the intermediate fuzzy models, we have improved the accuracy of these intermediate models. The RC (Regularly Criterion) error has been reduced for intermediate fuzzy models and the MSE decreased without using the new Trapezoid Approximation method. By using the new trapezoid method, the RC value for the intermediate models and MSE for the final model improved even more. This accuracy increase, result in a better detection of effective input data among input data records of a system.
AB - One of the most significant steps in fuzzy modeling of a complex system is Structure Identification. Efficient structure identification requires good approximation of the effective input data. Misclassification of effective input data can significantly degrade the efficiency of the inference of the fuzzy model. In this paper we present a modification to the Sugeno-Yasukawa modeler [1] to improve structure identification by increasing the accuracy of effective input data detection. We improved Sugeno-Yasukawa Modeler by modifying the algorithm in two ways. Firstly, we used a new Trapezoid Approximation method based on [2] to improve estimation of membership functions. Secondly we change the modeling process of modeling. There exist some intermediate models in the Sugeno-Yasukawa modeling process, a combination of which will result in the final fuzzy model of the system. In the original modeling process, parameter identification is only done for the final fuzzy model. By doing the parameter identification for the intermediate fuzzy models, we have improved the accuracy of these intermediate models. The RC (Regularly Criterion) error has been reduced for intermediate fuzzy models and the MSE decreased without using the new Trapezoid Approximation method. By using the new trapezoid method, the RC value for the intermediate models and MSE for the final model improved even more. This accuracy increase, result in a better detection of effective input data among input data records of a system.
KW - Fuzzy Logic
KW - Fuzzy Modeling
KW - Parameter Identification
KW - Structure Identification
KW - Trapezoid Estimation
UR - http://www.scopus.com/inward/record.url?scp=78449257672&partnerID=8YFLogxK
U2 - 10.1007/978-3-540-89985-3_118
DO - 10.1007/978-3-540-89985-3_118
M3 - Conference contribution
SN - 3540899847
SN - 9783540899846
T3 - Communications in Computer and Information Science
SP - 852
EP - 856
BT - Advances in Computer Science and Engineering - 13th International CSI Computer Conference, CSICC 2008, Revised Selected Papers
T2 - 13th International Computer Society of Iran Computer Conference on Advances in Computer Science and Engineering, CSICC 2008
Y2 - 9 March 2008 through 11 March 2008
ER -