464 227
Full Length Article
Volume 1 , Issue 1, PP: 5-18 , 2021

Title

A New Similarity Measure of Picture Fuzzy Sets And Application in pattern recognition

Authors Names :   Ngoc Minh Chau, Nguyen Thi Lan, Nguyen Xuan Thao   1 *  

1  Affiliation :  Faculty of Information Technology, Vietnam National University of Agriculture, Vietnam

    Email :  nmchau@vnua.edu.vn; ngtlan@vnua.edu.vn; nxthao@vnua.edu.vn



Doi   :  10.5281/zenodo.3685182


Abstract :

In this paper, we propose some novel similarity measures between picture fuzzy sets. The novel similarity measure is constructed by combining negative functions of each degree membership of picture fuzzy set. We apply them in several pattern recognition problems. Finally, we apply them to find the fault diagnosis of the steam turbine.

Keywords :

Picture fuzzy set; similarity measure; fault turbine

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