Title :
Trend detection and data mining via wavelet and Hilbert-Huang transforms
Author :
Yasar, Murat ; Ray, Asok
Author_Institution :
Techno-Sci., Inc., Beltsville, MD
Abstract :
This paper presents the formulation and evaluation of effective algorithms of reliable data analysis for real-time monitoring of incipient faults and anomalies, data fusion and event classification. The objective is to alleviate the shortcomings of the existing techniques for data mining by taking advantage of nonlinear filtering to handle non-Gaussian and non-stationary multiplicative noise and uncertainties. New concepts have been developed toward characterization of the data features and behavior interpretation of the underlying processes to evaluate their performance. In particular, the techniques of wavelet transform, Hilbert-Huang transform, and symbolic encoding are investigated to explore their effectiveness and relative simplicity to interpret and implement data mining tasks.
Keywords :
Hilbert transforms; data analysis; data mining; monitoring; wavelet transforms; Hilbert-Huang transforms; data analysis; data fusion; data mining; event classification; real-time monitoring; symbolic encoding; trend detection; wavelet transforms; Algorithm design and analysis; Data analysis; Data mining; Fault detection; Monitoring; Signal analysis; Signal processing; Spectral analysis; Time frequency analysis; Wavelet transforms; Data compression; Fault detection; Hilbert transform; Signal analysis; Wavelet transform;
Conference_Titel :
American Control Conference, 2008
Conference_Location :
Seattle, WA
Print_ISBN :
978-1-4244-2078-0
Electronic_ISBN :
0743-1619
DOI :
10.1109/ACC.2008.4587168