Title :
The application of neural networks to fuel processors for fuel-cell vehicles
Author :
Iwan, Laura C. ; Stengel, Robert F.
Author_Institution :
XCELLSIS Fuel Cell Engines Inc., Vancouver, BC, Canada
fDate :
1/1/2001 12:00:00 AM
Abstract :
Passenger vehicles fueled by hydrocarbons or alcohols and powered by proton exchange membrane (PEM) fuel cells address world air quality and fuel supply concerns while avoiding hydrogen infrastructure and on-board storage problems. Reduction of the carbon monoxide concentration in the on-board fuel processor´s hydrogen-rich gas by the preferential oxidizer (PrOx) under dynamic conditions is crucial to avoid poisoning of the PEM fuel cell´s anode catalyst and thus malfunction of the fuel-cell vehicle. A dynamic control scheme is proposed for a single-stage tubular cooled PrOx that performs better than, but retains the reliability and ease of use of, conventional industrial controllers. The proposed hybrid control system contains a cerebellar model articulation controller artificial neural network in parallel with a conventional proportional-integral-derivative (PID) controller. A computer simulation of the preferential oxidation reactor was used to assess the abilities of the proposed controller and compare its performance to the performance of conventional controllers. Realistic input patterns were generated for the PrOx by using models of vehicle power demand and upstream fuel-processor components to convert the speed sequences in the Federal Urban Driving Schedule to PrOx inlet temperatures, concentrations, and flow rates. The proposed hybrid controller generalizes well to novel driving sequences after being trained on other driving sequences with similar or slower transients. Although it is similar to the PID in terms of software requirements and design effort, the hybrid controller performs significantly better than the PID in terms of hydrogen conversion setpoint regulation and PrOx outlet carbon monoxide reduction
Keywords :
cellular neural nets; electric vehicles; proton exchange membrane fuel cells; road vehicles; three-term control; ANN; CO2; Federal Urban Driving Schedule; H; PID controller; air quality; alcohols; anode catalyst; artificial neural network; carbon monoxide concentration reduction; cerebellar model articulation controller; computer simulation; dynamic control; fuel processors; fuel supply; fuel-cell vehicles; hybrid controller; hydrocarbons; hydrogen conversion setpoint regulation; industrial controllers; neural networks; passenger vehicles; preferential oxidation reactor; preferential oxidizer; proportional-integral-derivative controller; proton exchange membrane fuel cells; single-stage tubular cooled PrOx; software requirements; speed sequences; upstream fuel-processor components; vehicle power demand; Fuel cell vehicles; Hydrocarbons; Hydrogen; Neural networks; Pi control; Proportional control; Protons; Temperature control; Three-term control; Vehicle dynamics;
Journal_Title :
Vehicular Technology, IEEE Transactions on