ADAPTIVE ROBUST BACKSTEPPING SLIDING MODE CONTROL OF A DE-ICING INDUSTRIAL ROBOT MANIPULATOR USING NEURAL NETWORK WITH DEAD ZONE, 154-169.

Van T. La, Shoudao Huang, Thi D. Tran, and Duc H. Vu

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