Cardiff University | Prifysgol Caerdydd ORCA
Online Research @ Cardiff 
WelshClear Cookie - decide language by browser settings

Identification of abnormal patterns in AR (1) process using CS-SVM

Zhang, Hongshuo, Zhu, Bo, Pang, Kaimin, Chen, Chunmei and Wan, Yuwei 2021. Identification of abnormal patterns in AR (1) process using CS-SVM. Intelligent Automation and Soft Computing 28 (3) , pp. 797-810. 10.32604/iasc.2021.017232

[thumbnail of TSP_IASC_42253.pdf] PDF - Published Version
Available under License Creative Commons Attribution.

Download (1MB)

Abstract

Using machine learning method to recognize abnormal patterns covers the shortage of traditional control charts for autocorrelation processes, which violate the applicable conditions of the control chart, i.e., the independent identically distributed (IID) assumption. In this study, we propose a recognition model based on support vector machine (SVM) for the AR (1) type of autocorrelation process. For achieving a higher recognition performance, the cuckoo search algorithm (CS) is used to optimize the two hyper-parameters of SVM, namely the penalty parameter c and the radial basis kernel parameter g. By using Monte Carlo simulation methods, the data sets containing samples of eight patters are generated in experiments for verifying the performance of the proposed model. The results of comparison experiments show that the average recognition rate of the proposed model reaches 96.25% as the autocorrelation coefficient is set equal to 0.5. That is apparently higher than those of the SVM model optimized by the particle swarm optimization (PSO) or the genetic algorithm (GA). Another experiment result demonstrates that the average recognition accuracy of the CS-SVM model also reaches higher than 95% for different autocorrelation levels. At last, a lot of data streams in or out of control are simulated to measure the ARL values. The results turn out that the model has an acceptable online performance. Therefore, we believe that the model can be used as a more effective approach for identification of abnormal patterns in autocorrelation process.

Item Type: Article
Date Type: Published Online
Status: Published
Schools: Engineering
Publisher: Taylor & Francis: STM, Behavioural Science and Public Health Titles
ISSN: 1079-8587
Date of First Compliant Deposit: 2 August 2021
Date of Acceptance: 1 March 2021
Last Modified: 16 May 2023 01:10
URI: https://orca.cardiff.ac.uk/id/eprint/142839

Citation Data

Cited 3 times in Scopus. View in Scopus. Powered By Scopus® Data

Actions (repository staff only)

Edit Item Edit Item

Downloads

Downloads per month over past year

View more statistics