Title of article :
Strong tracking filter based adaptive generic model control
Author/Authors :
X. Q. Xie، نويسنده , , D. H. Zhou and Y. H. Jin، نويسنده ,
Abstract :
Generic Model Control (GMC) is a control algorithm capable of using nonlinear process model directly. Parameters in GMC
controllers are easily tuned, and measurable disturbances can be compensated eectively. However, the existence of large modeling
errors and unmeasurable disturbances will make the performance of GMC deteriorate. In this paper, based on the theory of Strong
Tracking Filter (STF), a new approach to Adaptive Generic Model Control (AGMC) is proposed. Two AGMC schemes are
developed. The ®rst is a parameter-estimation-based AGMC. After introducing a new concept of Input Equivalent Disturbance
(IED), another AGMC scheme called IED-estimation-based AGMC is further proposed. The unmeasurable disturbance and
structural process/model mismatches can be eectively overcome by the second AGMC scheme. The laboratory experimental
results on a three-tank-system demonstrate the eectiveness of the proposed AGMC approach.
Keywords :
Nonlinear processes , Strong tracking ®lter , Adaptive control , Generic model control
Journal title :
Astroparticle Physics