基于自适应反步神经控制器的自动着陆容错改进

N. Naikal, Rohit Panikkar, A. Pashilkar, N. Ramrao
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引用次数: 6

摘要

本文提出了一种神经辅助控制器,提高了高性能战斗机在着陆阶段遭受强风和控制面卡滞等故障时的容错能力。本文的神经网络方案称为自适应反步神经控制器(ABNC)。在本研究中,我们将ABNC与经典控制器结合使用Gomi和Kawato的反馈错误学习范式来增强后者的故障容忍度。ABNC控制器采用径向基函数神经网络,无需事先训练即可在线学习。在重新配置中,控制器无法获得有关执行器故障的信息。采用经典的设计方法设计了反馈误差学习所需的基线控制器,以实现期望的具有紧密着陆分散的自主着陆轮廓,其中称为丸盒。基线设计能够满足在强风中着陆的要求,但不是专门为失败而设计的。研究了基于ABNC神经控制器的经典设计在预定义故障场景下的性能。本研究考虑的故障包括:1 .副翼或升降舵卡在一定挠度处的单一故障;一个副翼和一个升降舵卡在不同偏转处的组合故障。在这项研究中,一个特别有趣的难点是两个副翼都被卡在特定的偏转处。仿真研究表明,神经控制器辅助基线控制器,显著增强了系统的容错包络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Fault Tolerance for Autolanding Using Adaptive Backstepping Neural Controller
This paper presents a neural-aided controller that enhances the fault tolerant capabilities of a high performance fighter aircraft during the landing phase when subjected to severe winds and failures such as stuck control surfaces. The neural network scheme herein is called adaptive backstepping neural controller (ABNC). In this study we have combined ABNC along with the classical controller to enhance the failure tolerance of the latter using the feedback error-learning paradigm due to Gomi and Kawato. The ABNC controller uses radial basis function neural networks with on-line learning without prior training. Information about actuator failures is not available to the controller for use in reconfiguration. The baseline controller required for the feedback error learning has been designed using a classical design approach to achieve the desired autonomous landing profile with tight touchdown dispersions called therein as the pillbox. The baseline design is capable of meeting touchdown requirements in severe winds but is not specifically designed for failures. The performance of the classical design augmented with the ABNC based neural controller is studied in detail for predefined failure scenarios. The failures considered in this study are: i. Single faults of either aileron or elevator stuck at certain deflections and ii. Combination fault for both one aileron and one elevator stuck at different deflections. A hard over failure of particular interest in this study is that of both the ailerons being stuck at particular deflections. Simulation studies indicate that the neural controller aids the baseline controller, significantly enhancing the fault-tolerance envelope.
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