Seguir
Igor Loboda
Igor Loboda
Professor of Mechanics, National Polytechnic Institute, Mexico
Dirección de correo verificada de ipn.mx
Título
Citado por
Citado por
Año
Neural networks for gas turbine fault identification: Multilayer perceptron or radial basis network?
I Loboda, Y Feldshteyn, V Ponomaryov
De Gruyter 29 (1), 37-48, 2012
472012
Gas turbine fault diagnosis using probabilistic neural networks
I Loboda, MA Olivares Robles
International Journal of Turbo & Jet-Engines 32 (2), 175-191, 2015
392015
Gas turbine condition monitoring and diagnostics
I Loboda
Gas turbines, 119-144, 2010
282010
Deviation problem in gas turbine health monitoring
I Loboda, S Yepifanov, Y Feldshteyn
Proceedings of IASTED International Conference on Power and Energy Systems, 2004
282004
A generalized fault classification for gas turbine diagnostics at steady states and transients
I Loboda, S Yepifanov, Y Feldshteyn
272007
A mixed data-driven and model based fault classification for gas turbine diagnosis
I Loboda, S Yepifanov
Turbo Expo: Power for Land, Sea, and Air 43987, 257-265, 2010
252010
Adaptive vector directional filters to process multichannel images
V Ponomaryov, A Rosales, F Gallegos, I Loboda
IEICE transactions on communications 90 (2), 429-430, 2007
252007
Diagnostic analysis of maintenance data of a gas turbine for driving an electric generator
I Loboda, S Yepifanov, Y Feldshteyn
Turbo Expo: Power for Land, Sea, and Air 48821, 745-756, 2009
242009
Neural networks for gas turbine diagnosis
I Loboda
Artificial Neural Networks—Models and Applications, 2016
232016
Evaluation of gas turbine diagnostic techniques under variable fault conditions
JL Pérez-Ruiz, I Loboda, LA Miró-Zárate, M Toledo-Velázquez, ...
Advances in Mechanical Engineering 9 (10), 1687814017727471, 2017
202017
Neural networks for gas turbine fault identification: multilayer perceptron or radial basis network?
I Loboda, Y Feldshteyn, V Ponomaryov
Turbo Expo: Power for Land, Sea, and Air 54631, 465-475, 2011
182011
Aircraft engine gas-path monitoring and diagnostics framework based on a hybrid fault recognition approach
JL Pérez-Ruiz, Y Tang, I Loboda
Aerospace 8 (8), 232, 2021
172021
Polynomials and neural networks for gas turbine monitoring: a comparative study
I Loboda, Y Feldshteyn
Walter de Gruyter GmbH & Co. KG 28 (3), 227-236, 2011
162011
Polynomials and neural networks for gas turbine monitoring: A comparative study
I Loboda, Y Feldshteyn
Turbo Expo: Power for Land, Sea, and Air 43987, 417-427, 2010
152010
A benchmarking analysis of a data-driven gas turbine diagnostic approach
I Loboda, JL Pérez-Ruiz, S Yepifanov
Turbo Expo: Power for Land, Sea, and Air 51128, V006T05A027, 2018
142018
An integrated approach to gas turbine monitoring and diagnostics
I Loboda, S Yepifanov, Y Feldshteyn
Turbo Expo: Power for Land, Sea, and Air 43123, 359-367, 2008
132008
Gas turbine diagnostics under variable operating conditions
I Loboda, Y Feldshteyn, S Yepifanov
Turbo Expo: Power for Land, Sea, and Air 4790, 829-837, 2007
132007
Gas turbine fault recognition trustworthiness
I Loboda, S Yepifanov
Científica 10 (2), 65-74, 2006
132006
Gas path model identification as an instrument of gas turbine diagnosing
SV Yepifanov, II Loboda
Turbo Expo: Power for Land, Sea, and Air 36843, 371-376, 2003
132003
A more realistic scheme of deviation error representation for gas turbine diagnostics
I Loboda, S Yepifanov, Y Feldshteyn
Int. J. Turbo Jet-Engines 30 (2), 179-189, 2013
122013
El sistema no puede realizar la operación en estos momentos. Inténtalo de nuevo más tarde.
Artículos 1–20