Baseline methods for the paper Lab-scale Vibration Analysis Dataset and Baseline Methods for Machinery Fault Diagnosis with Machine Learning.
Download from here: https://zenodo.org/record/7006575#.Y3W9lzPP2og.
Locate the dataset to path like '/data/VBL-VA001`.
Structure of dataset:
bagus@m049:VBL-VA001$ tree -L 2 . --filelimit 100
.
├── bearing [1000 entries exceeds filelimit, not opening dir]
├── misalignment [1000 entries exceeds filelimit, not opening dir]
├── normal [1000 entries exceeds filelimit, not opening dir]
└── unbalance [1000 entries exceeds filelimit, not opening dir]
4 directories, 4000 files
You can also try the extracted feature under data
directory and run
the following codes.
# First, extract the feature
$ python3 extract_feature.py
# Then you can run any train_* program, i.e.,:
$ python3 train_svm.py
Shape of Train Data : (3200, 27)
Shape of Test Data : (800, 27)
Optimal C: 69
Max test accuracy: 1.0
The BPFO and BPFI values are obtained from the pump bearing type datasheet, namely type NTN Bearing 6201 which has BPFO coefficient of 2.62 and BPFI coefficient of 4.38.
@ARTICLE{Atmaja2023,
author = {Atmaja, Bagus Tris and Ihsannur, Haris and Suyanto and Arifianto, Dhany},
title = {Lab-Scale Vibration Analysis Dataset and Baseline Methods for Machinery Fault Diagnosis with Machine Learning},
year = {2023},
journal = {Journal of Vibration Engineering and Technologies},
doi = {10.1007/s42417-023-00959-9},
type = {Article},
publication_stage = {Article in press},
source = {Scopus},
}