A SVM framework for fault detection of the braking system in a high speed train

Mechanical Systems and Signal Processing - Tập 87 - Trang 401-409 - 2017
Jie Liu1, Yan‐Fu Li1, Enrico Zio2,3,1
1SSEC - Chaire Sciences des Systèmes et Défis Energétiques EDF/ECP/Supélec (France)
2LGI - Laboratoire Génie Industriel - EA 2606 (CentraleSupélec - Bâtiment Bouygues 3 rue Joliot Curie 91190 GIF-SUR-YVETTE - France)
3POLIMI - Politecnico di Milano [Milan] (Piazza Leonardo da Vinci, 32 20133 Milano - Italy)

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