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Adaptive Trajectory Tracking Algorithm of a Quadrotor with Sliding Mode Control and Multilayer Neural Network

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  • Kang Niu
  • Di Yang
  • Xi Chen
  • Rong Wang
  • Jianqiao Yu
  • Dan SeliÅŸteanu

Abstract

To improve the trajectory tracking accuracy, the anti-jamming performance, and the environment adaptability of a quadrotor, the paper proposes a new adaptive trajectory tracking algorithm with multilayer neural network and sliding mode control method. The major difference between other related approaches is that the paper uses the multilayer neural network in the system and the neural network is online computing in the whole process. Firstly, the paper establishes the quadrotor dynamic model and introduces the conception of Sigma-Pi neural network. Then, the paper adds the neural network to the attitude and trajectory tracking control loop. Moreover, the paper designs the adaptive neural network control law. At last, to illustrate the stability of the adaptive control law, the paper gives the Lyapunov stability analysis. Finally, to demonstrate the effectiveness of the method, the paper gives different types of simulation. Comparing with different cases, when increasing the layer of the neural network, the trajectory tracking performance becomes better. In addition, introducing multilayer neural network into the system could improve the anti-interference ability of the system and has a high-precision in tracking the desire trajectory.

Suggested Citation

  • Kang Niu & Di Yang & Xi Chen & Rong Wang & Jianqiao Yu & Dan SeliÅŸteanu, 2022. "Adaptive Trajectory Tracking Algorithm of a Quadrotor with Sliding Mode Control and Multilayer Neural Network," Complexity, Hindawi, vol. 2022, pages 1-14, August.
  • Handle: RePEc:hin:complx:1457532
    DOI: 10.1155/2022/1457532
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