Damar e0fade285a Add Theoretical Foundation (#78)
* feat(latex): add brief explanation of Short-Time Fourier Transform in theoretical foundation

* feat(latex): add brief evaluation of classic machine learning algorithms for damage localization

* fix(latex): correct STFT equation notation in theoretical foundation

Closes #72

* fix(latex): clarify STFT application in structural response analysis

* feat(latex): add explanation of windowing function in theoretical foundation

* feat(latex): expand classification algorithms section with additional methods and details

* feat(latex): add Hann window section with definition and application details

* feat(latex): enhance literature review with detailed SHM methods and STFT explanation
2025-05-23 03:13:34 +07:00
2025-03-16 12:02:35 +07:00
2025-05-23 03:13:34 +07:00
2024-09-07 09:13:57 +07:00
2024-09-09 23:14:01 +07:00

Summary

This repository contains the work related to my thesis, which focuses on damage localization prediction. The research explores the application of machine learning techniques to structural health monitoring.

Note: This repository does not contain the secondary data used in the analysis. The code is designed to work with data from the QUGS (Qatar University Grandstand Simulator) dataset, which is not included here.

The repository is private and access is restricted only to those who have been given explicit permission by the owner. Access is provided solely for the purpose of brief review or seeking technical guidance.

Restrictions

  • No Derivative Works or Cloning: Any form of copying, cloning, or creating derivative works based on this repository is strictly prohibited.
  • Limited Access: Use beyond brief review or collaboration is not allowed without prior permission from the owner.

All contents of this repository, including the thesis idea, code, and associated data, are copyrighted © 2024 by Rifqi Panuluh. Unauthorized use or duplication is prohibited.

LICENSE

Description
h3h3
Readme 15 MiB
Languages
TeX 63.9%
Jupyter Notebook 20.2%
Python 15.3%
Shell 0.6%