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Selected Flight Test Results for Online Learning Neural Network-Based Flight Control System

机译:基于在线学习神经网络的飞行控制系统的部分飞行测试结果

摘要

The NASA F-15 Intelligent Flight Control System project team has developed a series of flight control concepts designed to demonstrate the benefits of a neural network-based adaptive controller. The objective of the team is to develop and flight-test control systems that use neural network technology to optimize the performance of the aircraft under nominal conditions as well as stabilize the aircraft under failure conditions. Failure conditions include locked or failed control surfaces as well as unforeseen damage that might occur to the aircraft in flight. This report presents flight-test results for an adaptive controller using stability and control derivative values from an online learning neural network. A dynamic cell structure neural network is used in conjunction with a real-time parameter identification algorithm to estimate aerodynamic stability and control derivative increments to the baseline aerodynamic derivatives in flight. This set of open-loop flight tests was performed in preparation for a future phase of flights in which the learning neural network and parameter identification algorithm output would provide the flight controller with aerodynamic stability and control derivative updates in near real time. Two flight maneuvers are analyzed a pitch frequency sweep and an automated flight-test maneuver designed to optimally excite the parameter identification algorithm in all axes. Frequency responses generated from flight data are compared to those obtained from nonlinear simulation runs. An examination of flight data shows that addition of the flight-identified aerodynamic derivative increments into the simulation improved the pitch handling qualities of the aircraft.
机译:NASA F-15智能飞行控制系统项目团队开发了一系列飞行控制概念,旨在证明基于神经网络的自适应控制器的优势。该团队的目标是开发和测试使用神经网络技术的控制系统,以优化飞机在标称条件下的性能以及在故障条件下稳定飞机。故障情况包括控制面锁定或故障以及飞行中的飞机可能发生的不可预见的损坏。该报告使用来自在线学习神经网络的稳定性和控制导数值,给出了自适应控制器的飞行测试结果。动态单元结构神经网络与实时参数识别算法结合使用,以估计空气动力学稳定性并控制飞行中基线空气动力学导数的导数增量。进行这组开环飞行测试是为了为飞行的未来阶段做准备,在该阶段中,学习神经网络和参数识别算法输出将为飞行控制器提供近乎实时的空气动力学稳定性和控制导数更新。分析了两个飞行操纵的俯仰频率扫描和自动飞行试验操纵,该操纵被设计为最佳地激发所有轴上的参数识别算法。将从飞行数据生成的频率响应与从非线性仿真运行获得的频率响应进行比较。对飞行数据的检查表明,将飞行识别的空气动力学导数增量添加到模拟中可以改善飞机的俯仰处理质量。

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    Williams Peggy S.;

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