Title :
An adaptive threshold approach for the design of an actuator failure detection and identification scheme
Author :
Perhinschi, Mario G. ; Napolitano, Marcello R. ; Campa, Giampiero ; Seanor, Brad ; Burken, John ; Larson, Richard
Author_Institution :
Dept. of Mech. & Aerosp. Eng., West Virginia Univ., USA
fDate :
5/1/2006 12:00:00 AM
Abstract :
Typical logic schemes associated with failure detection and identification algorithms rely on a set of constant thresholds. The selection of the values for these thresholds is generally a tradeoff between the goals of maximizing failure detectability while minimizing false alarm rates. The main purpose of this brief is to propose an alternative to this conventional approach for defining the thresholds of a specific aircraft actuator failure detection and identification scheme. A specific set of detection and identification criteria for failures of the decoupled stabilators, canards, ailerons, and rudders of the NASA Advanced Control Technology for Integrated Vehicle F-15 aircraft have been formulated in terms of neural network estimates and correlation functions of the angular rates. The proposed scheme is based on the use of adaptive thresholds through the floating limiter concept. This new approach eliminates the need for parameter scheduling and has shown to be able to reduce the delays associated with the constant threshold method. The functionality of the approach has been illustrated through numerical simulations on the West Virginia University NASA Intelligent Flight Control System F-15 simulator.
Keywords :
adaptive control; aircraft control; failure analysis; identification; neural nets; stability; adaptive threshold approach; ailerons; aircraft actuator failure detection; canards; decoupled stabilators; false alarm rates; identification scheme; integrated vehicle F-15 aircraft; neural network estimates; rudders; Actuators; Aerospace control; Aircraft; Delay; Logic; NASA; Neural networks; Space technology; Vehicle detection; Vehicles; Actuator failure detection; aicraft control; failure analysis; flight safety; neural network;
Journal_Title :
Control Systems Technology, IEEE Transactions on
DOI :
10.1109/TCST.2005.860522