Multi-domain vibration dataset with various bearing types under compound machine fault scenarios

IF 1 Q3 MULTIDISCIPLINARY SCIENCES
Seongjae Lee , Taewan Kim , Taehyoun Kim
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引用次数: 0

Abstract

In modern complex mechanical systems, machine faults typically occur in multiple components simultaneously, and the domain of collected sensor data changes continuously due to variations in operating conditions. Deep learning-based fault diagnosis approaches have recently been enhanced to address these real-world industrial challenges. Comprehensive labeled data covering compound fault scenarios and multi-domain conditions are crucial for exploring these issues. However, existing multi-domain datasets focus on a limited range of operating conditions, such as motor rotating speeds and loads. This limits their applicability to real-world industrial scenarios. To bridge this gap, we present a novel multi-domain dataset that incorporates these basic conditions and extends to various bearing types and compound machine faults. The deep groove ball bearing, the cylindrical roller bearing, and the tapered roller bearing were utilized to provide data that reflect diverse mechanical interactions between the shaft and the bearing. Vibration data were collected using a USB digital accelerometer at two sampling rates and six rotating speeds, encompassing three single bearing faults, seven single rotating component faults, and 21 compound faults of the bearing and rotating component. Additionally, the dataset provides spectrograms of vibration data using short-time Fourier transform (STFT) for data-driven analysis with a 2-D input. This dataset encompasses more complex compound fault and domain shift problems than those presented in conventional public vibration datasets, thereby aiding researchers in studying intelligent fault diagnosis methods based on deep learning.

复合机器故障情况下不同类型轴承的多域振动数据集
在现代复杂机械系统中,机器故障通常会同时发生在多个部件上,而收集到的传感器数据域会因运行条件的变化而不断变化。为了应对这些现实世界中的工业挑战,基于深度学习的故障诊断方法最近得到了改进。涵盖复合故障场景和多域条件的全面标记数据对于探索这些问题至关重要。然而,现有的多域数据集只关注有限范围的运行条件,如电机转速和负载。这限制了它们在实际工业场景中的适用性。为了缩小这一差距,我们提出了一种新型多域数据集,它包含了这些基本条件,并扩展到各种轴承类型和复合机器故障。我们利用深沟球轴承、圆柱滚子轴承和圆锥滚子轴承提供数据,以反映轴和轴承之间的各种机械相互作用。振动数据是使用 USB 数字加速度计以两种采样率和六种旋转速度收集的,包括三个单一轴承故障、七个单一旋转部件故障以及轴承和旋转部件的 21 个复合故障。此外,数据集还提供了使用短时傅里叶变换 (STFT) 的振动数据频谱图,以便使用二维输入进行数据驱动分析。与传统的公共振动数据集相比,该数据集包含了更复杂的复合故障和域偏移问题,从而有助于研究人员研究基于深度学习的智能故障诊断方法。
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来源期刊
Data in Brief
Data in Brief MULTIDISCIPLINARY SCIENCES-
CiteScore
3.10
自引率
0.00%
发文量
996
审稿时长
70 days
期刊介绍: Data in Brief provides a way for researchers to easily share and reuse each other''s datasets by publishing data articles that: -Thoroughly describe your data, facilitating reproducibility. -Make your data, which is often buried in supplementary material, easier to find. -Increase traffic towards associated research articles and data, leading to more citations. -Open up doors for new collaborations. Because you never know what data will be useful to someone else, Data in Brief welcomes submissions that describe data from all research areas.
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