Neural-based compensation of nonlinearities in an airplane longitudinal model with dynamic-inversion control

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Abstract

The inversion design approach is a very useful tool for the complex multiple-input-multiple-output nonlinear systems to implement the decoupling control goal, such as the airplane model and spacecraft model. In this work, the flight control law is proposed using the neural-based inversion design method associated with the nonlinear compensation for a general longitudinal model of the airplane. First, the nonlinear mathematic model is converted to the equivalent linear model based on the feedback linearization theory. Then, the flight control law integrated with this inversion model is developed to stabilize the nonlinear system and relieve the coupling effect. Afterwards, the inversion control combined with the neural network and nonlinear portion is presented to improve the transient performance and attenuate the uncertain effects on both external disturbances and model errors. Finally, the simulation results demonstrate the effectiveness of this controller.

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Liu, Y. B., Li, Y. H., & Jin, F. T. (2017). Neural-based compensation of nonlinearities in an airplane longitudinal model with dynamic-inversion control. Computational Intelligence and Neuroscience, 2017. https://doi.org/10.1155/2017/8575703

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