Concepts de base
Gearbox fault diagnosis datasets facilitate testing new methods effectively.
Résumé
The article presents vibration datasets from gearboxes with various fault types and severity levels under different working conditions. It highlights the importance of studying gearbox fault diagnosis under variable operating conditions using vibration signals. The data includes details on fault categories, sampling frequencies, and key variables for analysis.
Article Information:
- Authors: Shijin Chen, Zeyi Liu, Xiao He, Dongliang Zou, Donghua Zhou.
- Affiliations: MCC5 Group Shanghai Co. LTD, Tsinghua University, Shandong University of Science and Technology.
- Keywords: Gearbox, variable working conditions, fault diagnosis.
Value of the Data:
- Dataset collected from gearboxes under varying conditions with multiple signal types.
- Dataset differs from existing literature by including complex conditions and a wide range of faults.
- Data can be used to study gearbox fault signals under variable conditions.
- Applicable for assessing newly developed methods for gearbox fault diagnosis.
Background:
Gearboxes operate under varying speed and load conditions affecting fault diagnosis models' accuracy.
Data Description:
Datasets include 240 sets of time series data with key variables like speed, torque, and vibration accelerations. The data is stored in CSV format and collected under different working conditions.
Experimental Design:
Datasets were collected using sensors to measure vibrations and torque signals under 12 working conditions.
Stats
The dataset encompasses a variety of fault types (including multiple single gear faults and multiple bearing-gear compound faults) and fault degrees of severity.
The sampling frequency for the datasets was 12.8 kHz.
The dataset contains a total of 240 sets of time series data.