Title :
Using learning techniques to accommodate unanticipated faults
Author :
Farrell, Jay ; Berger, Torsten ; Appleby, Brent
Author_Institution :
Charles Stark Draper Lab. Inc., Cambridge, MA, USA
fDate :
6/1/1993 12:00:00 AM
Abstract :
Procedures exist to rapidly accommodate certain types of faults, based on a priori specification of the postfault dynamics. A methodology is presented for accommodating the remaining unanticipated faults. For these two approaches, a tradeoff exists between the time to attain a solution to the reconfiguration problem and the generality of the approach. Unanticipated faults are represented as unmodeled forces and torques. Models of these forces and torques are developed online using a hybrid estimation/learning approach. The hybrid system is designed for fast estimation during the initial transient when a fault occurs, with continually improving performance as postfault information is accumulated by the learning system. Fault accommodation is achieved by a feedforward/feedback control architecture that employs an actuator distribution system to convert desired forces into individual actuator commands. This approach is demonstrated on a simulated autonomous vehicle, where the addition of a hybrid estimation/learning capability is shown to increase performance greatly over time.<>
Keywords :
feedback; identification; intelligent control; learning systems; actuator commands; actuator distribution system; autonomous vehicle; feedforward/feedback control; hybrid estimation/learning approach; learning system; postfault dynamics; unanticipated faults; unmanned underwater vehicle; Adaptive control; Control system synthesis; Control systems; Electronic switching systems; Engines; Fault detection; Fault diagnosis; Logic; Sensor systems; System testing;
Journal_Title :
Control Systems, IEEE