Title :
Data-driven neural network methodology to remaining life predictions for aircraft actuator components
Author :
Byington, Carl S. ; Watson, Matthew ; Edwards, Doug
Author_Institution :
Impact Technol., LLC, State College, PA, USA
Abstract :
Actuators are complex electro-hydraulic or mechanical mechanisms utilized in aircraft to drive flight control surfaces, landing gear, cargo doors, and weapon systems. Impact has developed a prognostic and health management (PHM) methodology for these critical systems that includes signal processing and neural network tracking techniques, along with automated reasoning, classification, knowledge fusion, and probabilistic failure mode progression algorithms. The processing utilizes the command/response signal and hydraulic pressure data from the actuators and provides a real-time assessment of the current/future actuator health state. This methodology was applied to F/A-18 stabilator electro-hydraulic servo valves (EHSVs) using test stand data provided by Boeing Phantom works. The automated module demonstrated excellent health state classification results. The prognosis was also successfully performed however no data was available to validate the prediction. These algorithms were developed with consideration to sensor/processing limitations for potential onboard implementation. Many of the PHM elements presented here could also be adapted for other actuator types and applications.
Keywords :
Bayes methods; electric actuators; failure analysis; fault diagnosis; feature extraction; fuzzy logic; fuzzy reasoning; hydraulic actuators; military aircraft; military computing; military equipment; neural nets; probability; remaining life assessment; sensor fusion; servomechanisms; Boeing Phantom; F/A-18 stabilator electrohydraulic servo valves; aircraft actuator components; automated health classification; automated module; automated reasoning; cargo doors; command signal; data driven neural network methodology; electrohydraulic mechanism; feature extraction; flight control surfaces; health state classification; hydraulic pressure data; knowledge fusion; landing gear; mechanical mechanism; neural network tracking techniques; probabilistic failure mode progression algorithms; prognostic health management methodology; remaining life predictions; response signal; signal processing; weapon systems; Aerospace control; Aircraft; Gears; Hydraulic actuators; Neural networks; Prognostics and health management; Servomechanisms; Signal processing; Signal processing algorithms; Weapons;
Conference_Titel :
Aerospace Conference, 2004. Proceedings. 2004 IEEE
Print_ISBN :
0-7803-8155-6
DOI :
10.1109/AERO.2004.1368175