The best way to conference proceedings by Francis Academic Press

Web of Proceedings - Francis Academic Press
Web of Proceedings - Francis Academic Press

A method for dam health diagnosis based on the improved attribute reduction

Download as PDF

DOI: 10.25236/icmit.2017.46

Author(s)

SHI Yu-qun, YANG Juan-juan, HAN Zi-long

Corresponding Author

SHI Yu-qun

Abstract

Since the traditional rough set theory can easily result in information loss during attribute discretization and its attribute reduction is too complex, the fuzzy rough set theory and the golden section method are introduced for dam health diagnosis. With attribute fuzzification replacing attribute discretization, and attribute significance as a condition of attribute reduction, the dam health rough set diagnosis model is improved. Next, the improved dam health rough set diagnosis model is applied to a practical project. Results show that the improved attribute reduction put forward in this paper can more fully demonstrate factors influencing uncertainty of the dam health status. The diagnosis results, while more reasonably reflecting the dam’s practical health status, can provide a new research path for dam health diagnosis.

Keywords

Dam, health diagnosis, fuzzy rough set, attribute significance, golden section method.