nlssest function help: How do I extract neural state space training losses to plot. MATLAB generates an automatic plot (neural state space); I want it in a different way
2 Kommentare
Antworten (1)
Hi @Bay Jay,
To save the training loss data generated by the nlssest function in MATLAB, you can utilize the TrainingOptions structure to specify the output of the training process. The nlssest function does not directly provide a way to save the training loss data, but you can achieve this by using a custom training function that captures the loss at each iteration. You will need to create a custom training function that records the training loss at each iteration. This function will be passed to the nlssest function.
function [lossHistory] = customTrainingFunction(~, state) persistent lossData; if isempty(lossData) lossData = []; end
if isequal(state.Event, 'iteration') lossData = [lossData; state.TrainingLoss]; % Capture the training loss end
lossHistory = lossData; % Return the loss history end
Then, set up the training options to use your custom training function.
% Define your model and data % For example, let's assume you have a simple model and data data = rand(100, 1); % Example data model = nlarx(data, [1 1]); % Example model
% Set training options options = nlssestOptions('MaxIter', 100, 'PlotLossFcn', @customTrainingFunction);
Now, train your model using the nlssest function while capturing the training loss data.
% Train the model [trainedModel, lossHistory] = nlssest(model, data, options);
After training, save the lossHistory variable to a file or plot it as needed.
% Save the loss history to a .mat file save('lossHistory.mat', 'lossHistory');
% Plot the training loss figure; plot(lossHistory); title('Training Loss Over Iterations'); xlabel('Iteration'); ylabel('Loss'); grid on;
Note: nlarx requires System Identification Toolbox.
Hope this helps.
If you have any further questions or need additional assistance, feel free to ask!
0 Kommentare
Siehe auch
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!