tuning model predictive controller

7 views (last 30 days)
Mounira
Mounira on 20 May 2024
Answered: Sam Chak on 20 May 2024
Hello,
so i want to tune my Model predictive controller; the model (microgrid) is working perfectly fine with the Model predictive controller, and the results are good, but my objectives within the model (microgrid) are not totally fulfilled, I tried to adjust the weights but still,
so my question is where can i have some live lessons in order to be able tune the MPC while taking into consideration my objectives,
thanks in advance for the answer,

Accepted Answer

Sam Chak
Sam Chak on 20 May 2024
This is often a problem where designers begin with what they are trying to end with. Similar to some LQR practitioners, some choose MPC because it can autotune, hoping to achieve the performance objectives by simply specifying key parameters like the prediction horizon, control horizon, sampling time, and cost function weights, thereby avoiding the extensive mathematical intervention required for manual tuning of standard feedback controllers.
However, when performance objectives aren't met, designers often find themselves tuning more parameters than the original number of control gains in standard feedback controllers. Generally, there are no hard and fast rules in tuning, but I tend to call this the "circular tuning fallacy."
Hope these articles are helpful:

More Answers (0)

Categories

Find more on Model Predictive Control Toolbox in Help Center and File Exchange

Products


Release

R2023a

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!