A neural network methodology is developed in order to reconstruct the near wall field in a turbulent flow by exploiting flow fields provided by direct numerical simulations. The results obtained from the neural network methodology are compared with the results obtained from prediction and reconstruction using proper orthogonal decomposition (POD). Using the property that the POD is equivalent to a specific linear neural network, a nonlinear neural network extension is presented. It is shown that for a relatively small additional computational cost nonlinear neural networks provide us with improved reconstruction and prediction capabilities for the near wall velocity fields. Based on these results advantages and drawbacks of both approaches are discussed with an outlook toward the development of near wall models for turbulence modeling and control. (C) 2002 Elsevier Science (USA).
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UNIV CALIF LOS ANGELES, DEPT AEROSP & MECH ENGN, LOS ANGELES, CA 90095 USAUNIV CALIF LOS ANGELES, DEPT AEROSP & MECH ENGN, LOS ANGELES, CA 90095 USA
Jeong, J
Hussain, F
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UNIV CALIF LOS ANGELES, DEPT AEROSP & MECH ENGN, LOS ANGELES, CA 90095 USAUNIV CALIF LOS ANGELES, DEPT AEROSP & MECH ENGN, LOS ANGELES, CA 90095 USA
Hussain, F
Schoppa, W
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UNIV CALIF LOS ANGELES, DEPT AEROSP & MECH ENGN, LOS ANGELES, CA 90095 USAUNIV CALIF LOS ANGELES, DEPT AEROSP & MECH ENGN, LOS ANGELES, CA 90095 USA
Schoppa, W
Kim, J
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UNIV CALIF LOS ANGELES, DEPT AEROSP & MECH ENGN, LOS ANGELES, CA 90095 USAUNIV CALIF LOS ANGELES, DEPT AEROSP & MECH ENGN, LOS ANGELES, CA 90095 USA
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Keldysh Institute of Applied Mathematics, Russian Academy of Sciences, MoscowKeldysh Institute of Applied Mathematics, Russian Academy of Sciences, Moscow
Zhdanova N.S.
Vasilyev O.V.
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Keldysh Institute of Applied Mathematics, Russian Academy of Sciences, MoscowKeldysh Institute of Applied Mathematics, Russian Academy of Sciences, Moscow