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Model predictive control using neural networks applied to flight control
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082655.pdf
Date
1999
Author
Karşıdağ, Süleyman Tarkan
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https://hdl.handle.net/11511/2061
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Graduate School of Natural and Applied Sciences, Thesis
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S. T. Karşıdağ, “Model predictive control using neural networks applied to flight control,” Middle East Technical University, 1999.