Adaptive Neural Networks-Based Dynamic Inversion Applied to Reconfigurable Flight Control and Envelope Protection Under Icing Conditions

Aircraft icing can result in degradation of the aerodynamic characteristics and reduction of the control effectiveness, which would pose serious threats to flight safety. Reconfigurable flight control and envelope protection of iced aircraft have become an effective solution to ensure flight safety...

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Main Authors: Yang Wei, Haojun Xu, Yuan Xue
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8951015/
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spelling doaj-9e7c60f1423c42dc92f0205e3f3b478d2021-03-30T03:03:29ZengIEEEIEEE Access2169-35362020-01-018115771159410.1109/ACCESS.2020.29647288951015Adaptive Neural Networks-Based Dynamic Inversion Applied to Reconfigurable Flight Control and Envelope Protection Under Icing ConditionsYang Wei0https://orcid.org/0000-0002-6881-5447Haojun Xu1https://orcid.org/0000-0003-4439-6855Yuan Xue2https://orcid.org/0000-0002-5523-3202Aeronautical Engineering College, Air Force Engineering University, Xi’an, ChinaAeronautical Engineering College, Air Force Engineering University, Xi’an, ChinaAeronautical Engineering College, Air Force Engineering University, Xi’an, ChinaAircraft icing can result in degradation of the aerodynamic characteristics and reduction of the control effectiveness, which would pose serious threats to flight safety. Reconfigurable flight control and envelope protection of iced aircraft have become an effective solution to ensure flight safety in icing encounters. In this study, the dynamic model of the iced aircraft was established, and high precision numerical simulation method and wind tunnel virtual flight experiment were applied to obtain the icing aerodynamic database. Furthermore, the reconfigurable flight control law was designed by using the adaptive neural networks based dynamic inversion (ANN-DI) control method. Simulation results demonstrate that the control method behaves well tracking performance and strong robustness in the presence of modeling errors and control surface damage. After that, an icing envelope protection system was designed based on control limiting strategy and the ANN-DI control was applied to calculate the control surface deflection limits based on the limit values of the key flight safety parameters. Finally, the designed icing envelope protection system has been verified through simulation in two autopilot modes under icing conditions. The simulation results obtained here show that the system could keep the key flight safety parameters such as the flight speed, the angle of attack (AOA), the side slip angle, and bank angle within the flight safe region under icing conditions. The method proposed in this study is expected to provide flight safety measures for in-flight icing.https://ieeexplore.ieee.org/document/8951015/Adaptive neural networks controlreconfigurable flight controlenvelope protectionicing
collection DOAJ
language English
format Article
sources DOAJ
author Yang Wei
Haojun Xu
Yuan Xue
spellingShingle Yang Wei
Haojun Xu
Yuan Xue
Adaptive Neural Networks-Based Dynamic Inversion Applied to Reconfigurable Flight Control and Envelope Protection Under Icing Conditions
IEEE Access
Adaptive neural networks control
reconfigurable flight control
envelope protection
icing
author_facet Yang Wei
Haojun Xu
Yuan Xue
author_sort Yang Wei
title Adaptive Neural Networks-Based Dynamic Inversion Applied to Reconfigurable Flight Control and Envelope Protection Under Icing Conditions
title_short Adaptive Neural Networks-Based Dynamic Inversion Applied to Reconfigurable Flight Control and Envelope Protection Under Icing Conditions
title_full Adaptive Neural Networks-Based Dynamic Inversion Applied to Reconfigurable Flight Control and Envelope Protection Under Icing Conditions
title_fullStr Adaptive Neural Networks-Based Dynamic Inversion Applied to Reconfigurable Flight Control and Envelope Protection Under Icing Conditions
title_full_unstemmed Adaptive Neural Networks-Based Dynamic Inversion Applied to Reconfigurable Flight Control and Envelope Protection Under Icing Conditions
title_sort adaptive neural networks-based dynamic inversion applied to reconfigurable flight control and envelope protection under icing conditions
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Aircraft icing can result in degradation of the aerodynamic characteristics and reduction of the control effectiveness, which would pose serious threats to flight safety. Reconfigurable flight control and envelope protection of iced aircraft have become an effective solution to ensure flight safety in icing encounters. In this study, the dynamic model of the iced aircraft was established, and high precision numerical simulation method and wind tunnel virtual flight experiment were applied to obtain the icing aerodynamic database. Furthermore, the reconfigurable flight control law was designed by using the adaptive neural networks based dynamic inversion (ANN-DI) control method. Simulation results demonstrate that the control method behaves well tracking performance and strong robustness in the presence of modeling errors and control surface damage. After that, an icing envelope protection system was designed based on control limiting strategy and the ANN-DI control was applied to calculate the control surface deflection limits based on the limit values of the key flight safety parameters. Finally, the designed icing envelope protection system has been verified through simulation in two autopilot modes under icing conditions. The simulation results obtained here show that the system could keep the key flight safety parameters such as the flight speed, the angle of attack (AOA), the side slip angle, and bank angle within the flight safe region under icing conditions. The method proposed in this study is expected to provide flight safety measures for in-flight icing.
topic Adaptive neural networks control
reconfigurable flight control
envelope protection
icing
url https://ieeexplore.ieee.org/document/8951015/
work_keys_str_mv AT yangwei adaptiveneuralnetworksbaseddynamicinversionappliedtoreconfigurableflightcontrolandenvelopeprotectionundericingconditions
AT haojunxu adaptiveneuralnetworksbaseddynamicinversionappliedtoreconfigurableflightcontrolandenvelopeprotectionundericingconditions
AT yuanxue adaptiveneuralnetworksbaseddynamicinversionappliedtoreconfigurableflightcontrolandenvelopeprotectionundericingconditions
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