- Combine your input data ("rotational speed", torque, time) into a single matrix where each row represents a different operating point and ensure your target data (temperature) is in a corresponding vector.
- Use a standard feedforward neural network with input and output layers designed for regression and use the "train" function instead of "trainnet".
Sequence oder Featureinput layer ?
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Hello dear Community,
i am currently trying to use a Feed-Forward Neural Network for a regression problem.
The input data i want to feed in are "rotational speed", "torque" and "time".
The target data is the temperature of an electrical drive.
And then i will have different operating points dependend on speed:
2000 rpm, 4000 rpm ....
The torque and time however stays the same for each point.
Right now, i am using a sequenceInputLayer and arranged the Data in 4 cells, where each cell contains 3 columns of data. One cell represents one OP.
The results are not good, and my gut tells me, that i might have a misunderstanding the way i treat the input data.
I am using MATLAB r24a and am training the network with the "trainnet"-function.
If you have any Suggestions to do this in a different way, go ahead.
Thank you very much in advance.
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Abhas
le 9 Août 2024
Hi Tobias,
Instead of using a "sequenceInputLayer", you can use a standard "feedforwardnet" in MATLAB. You can follow the below steps to restructure your approach:
Here's is a sample example MATLAB code to demonstrate the same:
% Example Data
% Assuming you have 10 operating points
rotational_speed = [2000, 4000, 6000, 8000, 10000, 12000, 14000, 16000, 18000, 20000]; % Your actual data here
torque = repmat(50, 1, 10); % Example constant torque
time = repmat(10, 1, 10); % Example constant time
temperature = [70, 75, 80, 85, 90, 95, 100, 105, 110, 115]; % Your target temperature data
% Combine inputs into a matrix (each row is a feature, each column is a sample)
inputs = [rotational_speed; torque; time];
% Target data
targets = temperature;
% Create a Feed-Forward Neural Network
hiddenLayerSize = 10; % Adjust as needed
net = feedforwardnet(hiddenLayerSize);
% Train the Network
[net, tr] = train(net, inputs, targets);
% View the Network
view(net);
% Test the Network
outputs = net(inputs);
errors = gsubtract(targets, outputs);
performance = perform(net, targets, outputs);
% Display Results
disp('Performance:');
disp(performance);
You may refer to the attached output images and also the following MathWorks documentation links to have a better understanding on "feedforwardnet" and "train" functions:
2 commentaires
Abhas
le 9 Août 2024
In that case, "dlnetwork" might be helpful for you. You may refer to the below documentation links and try to incorporate them:
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