NEURAL NETWORK CONTROL OF A 2-DOF HELICOPTER SYSTEM WITH TIME-VARYING STATE CONSTRAINTS AND UNKNOWN INPUT HYSTERESIS

Lihua Wu,∗ Jie Bai,∗ Jiecheng Li,∗ Guohao Huang,∗ and Huiyuan Wu∗

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