TY - JOUR
T1 - Aalto Gear Fault datasets for deep-learning based diagnosis
AU - Dahl, Zacharias
AU - Hämäläinen, Aleksanteri
AU - Karhinen, Aku
AU - Miettinen, Jesse
AU - Böhme, Andre
AU - Lillqvist, Samuel
AU - Haikonen, Sampo
AU - Viitala, Raine
N1 - Publisher Copyright:
© 2024 The Author(s)
PY - 2024/12
Y1 - 2024/12
N2 - Accurate system health state prediction through deep learning requires extensive and varied data. However, real-world data scarcity poses a challenge for developing robust fault diagnosis models. This study introduces two extensive datasets, Aalto Shim Dataset and Aalto Gear Fault Dataset, collected under controlled laboratory conditions, aimed at advancing deep learning-based fault diagnosis. The datasets encompass a wide range of gear faults, including synthetic and realistic failure modes, replicated on a downsized azimuth thruster testbench equipped with multiple sensors. The data features various fault types and severities under different operating conditions. The comprehensive data collected, along with the methodologies for creating synthetic faults and replicating common gear failures, provide valuable resources for developing and testing intelligent fault diagnosis models, enhancing their generalization and robustness across diverse scenarios.
AB - Accurate system health state prediction through deep learning requires extensive and varied data. However, real-world data scarcity poses a challenge for developing robust fault diagnosis models. This study introduces two extensive datasets, Aalto Shim Dataset and Aalto Gear Fault Dataset, collected under controlled laboratory conditions, aimed at advancing deep learning-based fault diagnosis. The datasets encompass a wide range of gear faults, including synthetic and realistic failure modes, replicated on a downsized azimuth thruster testbench equipped with multiple sensors. The data features various fault types and severities under different operating conditions. The comprehensive data collected, along with the methodologies for creating synthetic faults and replicating common gear failures, provide valuable resources for developing and testing intelligent fault diagnosis models, enhancing their generalization and robustness across diverse scenarios.
KW - Condition monitoring
KW - Deep learning
KW - Intelligent fault diagnosis
KW - Lateral vibration
KW - Torsional vibration
KW - Vibration dataset
UR - http://www.scopus.com/inward/record.url?scp=85211381929&partnerID=8YFLogxK
U2 - 10.1016/j.dib.2024.111171
DO - 10.1016/j.dib.2024.111171
M3 - Data Article
AN - SCOPUS:85211381929
SN - 2352-3409
VL - 57
JO - Data in Brief
JF - Data in Brief
M1 - 111171
ER -