Title :
On reducing feature dimensionality for partial discharge diagnosis applications
Author_Institution :
Machine Learning Lab., GE Global Res. Center, Niskayuna, NY, USA
Abstract :
Feature dimensionality reduction is a critical task in various machine learning applications including prognostics and health management (PHM) applications. Linear transformations, most popularly principal component analysis (PCA) and linear discriminant analysis (LDA), are the most widely-used methods for feature dimensionality reduction. For classification problems, LDA, being a supervised linear transformation that aims at maximally retaining class discriminant information, is generally considered to be a better method than PCA, an unsupervised method. However, LDA suffers from the singularity or small sample size problem. Attempting to address this problem, in this paper we propose a cluster-based LDA (cLDA) for feature dimensionality reduction. It first partitions features in distinct clusters and then performs cluster-wise LDA transformation. We demonstrate the effectiveness of the proposed cLDA on reducing the number of features by using a real-world PHM application - partial discharge diagnosis.
Keywords :
aircraft; learning (artificial intelligence); principal component analysis; PCA; aircraft wiring fault detection; cluster-based LDA; feature dimensionality reduction; linear discriminant analysis; machine learning; partial discharge diagnosis applications; principal component analysis; prognostics and health management applications; supervised linear transformation; unsupervised method; Handheld computers; Heating; Wires; fault detection and diagnosis; feature dimensionality reduction; feature selection; feature transformation; linear discriminant analysis; partial discharge diagnosis;
Conference_Titel :
Prognostics and System Health Management (PHM), 2012 IEEE Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4577-1909-7
Electronic_ISBN :
2166-563X
DOI :
10.1109/PHM.2012.6228839