Logo image
An intelligent fault diagnosis method using variable weight artificial immune recognizers (V-AIR)
Journal article   Open access   Peer reviewed

An intelligent fault diagnosis method using variable weight artificial immune recognizers (V-AIR)

Hongli Zhang, Jicheng Liu, Erping Zhou, Dong Li, Bo Wang and Kunju Shi
Journal of Vibroengineering, Vol.17(5), pp.2350-2368
01/08/2015

Abstract

Engineering, Biomedical Engineering, Mechanical Science & Technology Engineering Technology
The Artificial Immune Recognition System (AIRS), which has been proved to be a successful classification method in the field of Artificial Immune Systems, has been used in many classification problems and gained good classification effect. However, the network inhibition mechanisms used in these methods are based on the threshold inhibition and the cells with low affinity will be deleted directly from the network, which will misrepresent the key features of the data set for not considering the density information within the data. In this paper, we utilize the concept of data potential field and propose a new weight optimizing network inhibition algorithm called variable weight artificial immune recognizer (V-AIR) where we replace the network inhibiting mechanism based on affinity with the inhibiting mechanism based on weight optimizing. The concept of data potential field was also used to describe the data distribution around training samples and the pattern of a training data belongs to the class with the largest potential field. At last, we used this algorithm to rolling bearing analog fault diagnosis and reciprocating compressor valves fault diagnosis, which get a good classification effect.
url
An intelligent fault diagnosis method using variable weight artificial immune recognizers (V-AIR)View
Published (Version of record) Open

Metrics

13 Record Views

Details

Logo image

Usage Policy