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Hybrid HC-PAA-G3K for novelty detection on industrial systems

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conference contribution
posted on 2024-02-09, 17:08 authored by Jun Chen, Michael Gallimore, Yu Zhang
<p>Piecewise aggregate approximation (PAA) provides a powerful yet computationally efficient tool for dimensionality reduction and feature extraction. A new distance-based hierarchical clustering (HC) is now proposed to adjust the PAA segment frame sizes. The proposed hybrid HC-PAA is validated by a generic clustering method ‘G3Kmeans’ (G3K). The efficacy of the hybrid HC-PAA-G3K methodology is demonstrated using an application case study based on novelty detection on industrial gas turbines. Results show the hybrid HC-PAA provides improved performance with regard to cluster separation, compared to traditional PAA. The proposed method therefore provides a robust algorithm for feature extraction and novelty detection. There are two main contributions of the paper: 1) application of HC to modify conventional PAA segment frame size; 2) introduction of ‘G3Kmeans’ to improve the performance of the traditional K-means clustering methods.</p>

History

School affiliated with

  • School of Engineering (Research Outputs)

Date Submitted

2014-08-19

Date Accepted

2014-08-14

Date of First Publication

2014-08-14

Date of Final Publication

2014-08-14

Event Name

International Conference on Advanced Technology & Sciences (ICAT'14)

Event Dates

12-15 August, 2014

Date Document First Uploaded

2014-08-18

ePrints ID

14704

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