Description
This online resource shows two archived folders: Matlab and Python, that contain relevant code for the article: A Bayesian finite-element trained machine learning approach for predicting post-burn contraction.
One finds the codes used to generate the large dataset within the Matlab folder. Here, the file Main.m is the main file and from there, one can run the Monte Carlo simulation. There is a README file.
Within the Python folder, one finds the codes used for training the neural networks and creating the online application. The file Data.mat contains the data generated by the Matlab Monte Carlo simulation. The files run_bound.py, run_rsa.py, and run_tse.py train the neural networks, of which the best scoring ones are saved in the folder Training. The DashApp folder contains the code for the creation of the Application.
One finds the codes used to generate the large dataset within the Matlab folder. Here, the file Main.m is the main file and from there, one can run the Monte Carlo simulation. There is a README file.
Within the Python folder, one finds the codes used for training the neural networks and creating the online application. The file Data.mat contains the data generated by the Matlab Monte Carlo simulation. The files run_bound.py, run_rsa.py, and run_tse.py train the neural networks, of which the best scoring ones are saved in the folder Training. The DashApp folder contains the code for the creation of the Application.
| Date made available | 28 Oct 2022 |
|---|---|
| Publisher | TU Delft - 4TU.ResearchData |
| Date of data production | 2022 - |
Research output
- 1 Article
-
A Bayesian finite-element trained machine learning approach for predicting post-burn contraction
Egberts, G., Schaaphok, M., Vermolen, F. & Zuijlen, P. V., 2022, In: Neural Computing and Applications. 34, 11, p. 8635-8642 8 p.Research output: Contribution to journal › Article › Scientific › peer-review
Open AccessFile7 Link opens in a new tab Citations (Scopus)66 Downloads (Pure)
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