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Nonlinear control / Science / Markov models / Sliding mode control / Dynamical systems / Optimal control / Integral sliding mode / Quadrotor / Feedback linearization / Systems theory / Control theory / Cybernetics


Multi-Agent Quadrotor Testbed Control Design: Integral Sliding Mode vs. Reinforcement Learning
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Document Date: 2007-01-10 18:14:08


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