Logo image
A full generalization of the Gini index for bearing condition monitoring
Journal article   Open access   Peer reviewed

A full generalization of the Gini index for bearing condition monitoring

Bingyan Chen, Dongli Song, Fengshou Gu, Weihua Zhang, Yao Cheng, Andrew D. Ball, Adam Bevan and James Xi Gu
Mechanical systems and signal processing, Vol.188, 109998
01/04/2023

Abstract

Engineering, Mechanical Science & Technology Engineering Technology
The classic Gini index (GI) is generalized recently by using nonlinear weight sequences as sparsity measures for sparse quantification and machine condition monitoring. The generalized GIs with different weight parameters are more robust to random transients. However, they show insufficient performance in discriminating repetitive transients under noise contamination. To overcome this shortage, this paper proposes a two-parameter generalization method to tune not only the weight parameter but also the norm order, allowing for a full generalization of the classic GI to quantify transient features and leading to new statistical indicators which are named fully generalized GIs (FGGIs). Mathematical derivations show that FGGIs satisfy at least four of the six typical attributes of sparsity measures and that those with weight parameter equal to one satisfy at least five sparse attributes, proving that they are a new family of sparsity measures. Numerical simulations demonstrate that FGGIs can monotonically evaluate the sparseness of the signals and that the FGGIs with appropriate parameters exhibit improved performance in resisting random transient interferences and discriminating noise-contaminated repetitive transients compared to traditional sparsity measures. The performance of FGGIs in the condition monitoring of rolling element bearings is validated using two different run-to-failure experiment datasets, including a gradual failure and a sudden failure. The results show that increasing the norm order can improve the capability of FGGIs to characterize transient fault features, allowing more accurate trending of bearing health conditions, and therefore achieving better condition monitoring performance than the traditional sparsity measures.
pdf
A full generalization of the Gini index for bearing condition monitoring4.14 MBDownloadView
AcceptedOpen AccessCC BY-NC-ND V4.0 Open Access
url
Link to published versionView
Published (Version of record)Publisher sites may require a subscription to access contentIn Copyright All Rights Reserved Restricted
url
https://pure.hud.ac.uk/ws/files/54191545/MSSP22_1181R2_final_version.pdfView
Open

Metrics

6 File views/ downloads
27 Record Views
37 Times Cited - Scopus

Details

UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#9 Industry, Innovation and Infrastructure
Logo image

Usage Policy