Publication | Closed Access
Aero-engine direct thrust control with nonlinear model predictive control based on linearized deep neural network predictor
15
Citations
17
References
2019
Year
Nonlinear ControlNonlinear System IdentificationEngineeringAerospace EngineeringBack PropagationIntelligent ControlAdaptive ControlSystems EngineeringComputational ComplexityModel Predictive ControlPropulsionEngine Response AbilityLearning ControlFlight Control
A novel nonlinear model predictive control method for aero-engine direct thrust control is proposed to improve engine response ability and reduce computational complexity of nonlinear model predictive control. The control objective of the proposed method is the thrust directly instead of the measurable parameters. The linearized model based on online sliding window deep neural network is proposed as predictive model. The online sliding window deep neural network has strong fitting capacity for nonlinear object and adopted to fitting the transient process of engine. The back propagation is adopted to obtain linearized model of online sliding window deep neural network, which greatly reduce the calculated amount. The comparison simulations of the popular nonlinear model predictive control based on extended Kalman filter and the proposed one are carried out. The simulation results show that compared with the popular nonlinear model predictive control, the proposed nonlinear model predictive control not only has the better response ability but also has reduced computational complexity greatly, nearly reduce computation time more than 35 ms.
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