I want to estimate the parameters of my Modelica model by minimizing the error between measured data and my experimental model parameters. The only implementation I found is the Nelder-Mead algorithm optimization and It's not clear how to implement it.
############################## MODEL #####################################
from pyfmi import load_fmu
# Load model
model = load_fmu("TrialPython.fmu") ###Model with 13 defined input variables
output_fmu=['results.P_DC']### The output variable of the model
res = model.simulate(input=input_object, ##Simulation
start_time = tstart,
final_time = tstop)
P = res[output_fmu[0]]#### Output of the simulation
RealP_DC= pd.read_csv(path)### Real data
def MSE (parameters):#### OBJECTIVE FUNCTION WE WANT TO MINIMIZE
return (((SIMULATED(parameters))-RealP_DC)**2).mean())
Instead of manually tuning the parameters (13 variables) to minimize the objective function MSE defined like a squared difference between simulated and measured (Real) data how could I implement it with pYFMI. Any hints are welcome
scipy
instead.