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Original Articles

Combining neural and conventional paradigms for modelling,prediction and control

Pages 65-81 | Received 29 Apr 1996, Accepted 10 Jul 1996, Published online: 03 Apr 2007

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Mehmet Önder Efe, Marco Debiasi, Peng Yan, Hitay Özbay & Mohammad Samimy. (2008) Neural network-based modelling of subsonic cavity flows. International Journal of Systems Science 39:2, pages 105-117.
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