Open access peer-reviewed chapter

Performance Analysis of Hybrid Non-Supervised & Supervised Learning Techniques Applied to the Classification of Faults in Energy Transport Systems

By Jhon Albeiro Calderón, Germán Zapata Madrigal and Demetrio A. Ovalle Carranza

Published: January 1st 2009

DOI: 10.5772/6561

Downloaded: 4794

© 2009 The Author(s). Licensee IntechOpen. This chapter is distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike-3.0 License, which permits use, distribution and reproduction for non-commercial purposes, provided the original is properly cited and derivative works building on this content are distributed under the same license.

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Jhon Albeiro Calderón, Germán Zapata Madrigal and Demetrio A. Ovalle Carranza (January 1st 2009). Performance Analysis of Hybrid Non-Supervised & Supervised Learning Techniques Applied to the Classification of Faults in Energy Transport Systems, Machine Learning, Abdelhamid Mellouk and Abdennacer Chebira, IntechOpen, DOI: 10.5772/6561. Available from:

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