Title :
Reconfigurable control strategy for aircraft model operating under uncertainty
Author :
Mikhail, Maged ; Zein-Sabatto, Saleh ; Terrell, Kevin ; Bodruzzaman, Mohammed ; Ramsey, James
Author_Institution :
Tennessee State Univ., Nashville, TN, USA
Abstract :
In this paper an intelligent control methodology is developed and used for the design and implementation of reconfigurable controllers capable of switching between different operating conditions of a longitudinal aircraft model. The methodology is based on the adaptive-neuro fuzzy inference system (ANFIS) and is used to design reconfigurable controllers for commercial aircrafts operating under uncertain flight conditions. This methodology is an attempt to solve the problems of using indicator function presented in [1]. Some of these problems include; discontinuity when switching between operating conditions, requirement of an indicator function and, impracticality for real-time implementation. Several linearized longitudinal aircraft models are extracted from a Generic Transport Model (GTM) and are used to test by simulation the performance of the developed control system. In the work, two adaptive controllers are designed and used to test the performance of the reconfigurable control system. Two additional optimal controllers are developed using the LQR method and are used to establish two reference models of the aircraft operating at two different flight conditions. Then an ANFIS based reconfigurable controllers are trained to work in coordination with the established reference models. Finally, the ANFIS based reconfigurable control system is tested under several operating conditions near the operating conditions of the reference models. The different tests of the ANFIS based reconfigurable control system produced desirable results under different operating condition with minimum performance error. The design of the adaptive controllers as well as the development and test results of the reconfigurable control system are all presented in this paper.
Keywords :
adaptive control; aircraft control; control system synthesis; fuzzy control; linear quadratic control; neurocontrollers; ANFIS; GTM; LQR method; adaptive controllers; adaptive-neuro fuzzy inference system; commercial aircrafts; generic transport model; intelligent control methodology; longitudinal aircraft model; optimal controllers; performance error; reconfigurable controller design; uncertain flight conditions; Adaptation models; Analytical models; Atmospheric modeling; Computational modeling; Computer architecture; Switches; ANFIS; Adaptive Control Reference Model; Aircraft Control; Intelligent Control;
Conference_Titel :
SoutheastCon 2015
Conference_Location :
Fort Lauderdale, FL
DOI :
10.1109/SECON.2015.7132966