How to plot the least square method?

2 visualizzazioni (ultimi 30 giorni)
RoBoTBoY
RoBoTBoY il 24 Apr 2021
Commentato: Star Strider il 24 Apr 2021
Hello!
I have these measurements of an experiment where Kp and Kd are the coefficients of PD controller and model displays critical damping at these measurements.
I want to find the ideal curve with respect to least sqruare method.
How to do that?
I tried that but I don't know if is true.
plot(Kd,Kp,'go')
hold on
f = fit(Kd,Kp,'poly2');
plot(f,Kd,Kp,'b--')
xlim([0.2,1.3])
ylim([-2,22])
legend('Location','NorthWest');
hold off
  3 Commenti
RoBoTBoY
RoBoTBoY il 24 Apr 2021
How do I connect these points with a curve?
So this diagram I drew is wrong?
Star Strider
Star Strider il 24 Apr 2021
'How do I connect these points with a curve?
Whatever works, unless you have a mathematical model of the process that created them, and in that instance, use that mathematical model with a linear or nonlinear parameter estimation function. Then, using that function and the estimated parameters, calculate the fit and plot the line using those data.
One option is a spline fit —
Kd_Kp = readtable('https://www.mathworks.com/matlabcentral/answers/uploaded_files/595780/Kd_Kp.xlsx')
Kd_Kp = 4×2 table
Kp Kd __ ___ 1 0.3 5 0.6 10 0.8 20 1.2
Kd_v = linspace(min(Kd_Kp.Kd), max(Kd_Kp.Kd));
Kp_v = spline(Kd_Kp.Kd, Kd_Kp.Kp, Kd_v);
figure
scatter(Kd_Kp.Kd, Kd_Kp.Kp, 'filled')
hold on
plot(Kd_v, Kp_v, '-r')
hold off
xlabel('K_d')
ylabel('K_p')
grid
legend('Data','Spline Fit', 'Location','best')
It all depends on the result you want, and the process that created the data.

Accedi per commentare.

Risposte (0)

Categorie

Scopri di più su Smoothing in Help Center e File Exchange

Community Treasure Hunt

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

Start Hunting!

Translated by