Electronics Optics & Control, Volume. 25, Issue 5, 26(2018)
An Improved Model-Free Adaptive Control Algorithm Based on Steepest Descent Method
The model-free adaptive algorithm is a data-driven methodwhich does not require an accurate model of the systemhas small calculation cost and is easy to implement.The existing model-free adaptive control algorithm often adopts the cut-and-trial method or uses a fixed constant when selecting the penalty factorwhich is difficult to achieve a satisfactory control performance.To solve this problemthis paper proposes a method to online optimize the penalty factor of the control law and the pseudo partial derivative.By using the idea of iterative optimization in the steepest descent methodthe penalty factor is optimizedthe convergence speed is increased significantlyand better system performance parameters are obtained.Hencethe optimal performance of the system can be achieved.On this basisthe stability of the closed-loop system is strictly proved.FinallyMatlab simulation results show that the proposed method has better control quality and stronger anti-disturbance abilities than the existing model-free adaptive control method.
Get Citation
Copy Citation Text
JI Rui, DIAN Song-yi, SU Min. An Improved Model-Free Adaptive Control Algorithm Based on Steepest Descent Method[J]. Electronics Optics & Control, 2018, 25(5): 26
Category:
Received: Jun. 14, 2017
Accepted: --
Published Online: Jun. 29, 2018
The Author Email: