MIMO U-model based control: real-time tracking control and feedback analysis via small gain theorem
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Syed Saad Azhar Ali | Muhammad Shafiq | Fouad M. AL-Sunni | J. M. Bakhashwain | J. Bakhashwain | F. Al-Sunni | S. Ali | Muhammad Shafiq
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