Neural network-based nonlinear fixed-time adaptive practical tracking control for quadrotor unmanned aerial vehicles (Q2210258)
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| Language | Label | Description | Also known as |
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| English | Neural network-based nonlinear fixed-time adaptive practical tracking control for quadrotor unmanned aerial vehicles |
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Neural network-based nonlinear fixed-time adaptive practical tracking control for quadrotor unmanned aerial vehicles (English)
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5 November 2020
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Summary: This brief addresses the position and attitude tracking fixed-time practical control for quadrotor unmanned aerial vehicles (UAVs) subject to nonlinear dynamics. First, by combining the radial basis function neural networks (NNs) with virtual parameter estimating algorithms, a NN adaptive control scheme is developed for UAVs. Then, a fixed-time adaptive law is proposed for neural networks to achieve fixed-time stability, and convergence time is dependent only on control gain parameters. Based on Lyapunov analyses and fixed-time stability theory, it is proved that the fixed-time adaptive neural network control is finite-time stable and convergence time is dependent with control parameters without initial conditions. The effectiveness of the NN fixed-time control is given through a simulation of the UAV system.
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