Title :
Comparison of Different Neural Augmentations for the Fault Tolerant Control Laws of the WVU YF-22 Model Aircraft
Author :
Perhinschi, Mario G. ; Burken, John ; Campa, Giampiero
Author_Institution :
West Virginia Univ., Morgantown, WV
Abstract :
A fault tolerant neurally augmented control scheme based on non-linear dynamic inversion is designed for the WVU YF-22 aircraft model. The parameters of the model following adaptive flight controller are determined at a single flight condition and a neural network is used to compensate for inversion errors and changes in aircraft dynamics, including actuator failures. Three different neural networks are used: the extended minimal resource allocating network, the single hidden layer network, and the sigma pi. Numerical simulations are performed at nominal flight conditions and failure conditions affecting the stabilator or the aileron. Performance assessment parameters are defined based on the angular rate tracking errors. The performance of the three neural networks is compared in terms of these parameters
Keywords :
aerodynamics; aircraft control; fault tolerance; neurocontrollers; nonlinear dynamical systems; WVU YF-22 aircraft model; actuator failure; adaptive flight controller; aircraft dynamics; error tracking; extended minimal resource allocating network; fault tolerant neurally augmented control; inversion error; neural network; nonlinear dynamic inversion; sigma pi; single hidden layer network; Actuators; Adaptive control; Aerospace control; Aircraft; Error correction; Fault tolerance; Neural networks; Numerical simulation; Programmable control; Resource management;
Conference_Titel :
Control and Automation, 2006. MED '06. 14th Mediterranean Conference on
Conference_Location :
Ancona
Print_ISBN :
0-9786720-1-1
Electronic_ISBN :
0-9786720-0-3
DOI :
10.1109/MED.2006.328793