Bearings are one of the vital components of rotating machines that are prone to unexpected faults. Therefore, bearing fault diagnosis and condition monitoring is essential for reducing operational costs and downtime in numerous industries. In various production conditions, bearings can be operated under a range of loads and speeds, which causes different vibration patterns associated with each fault type. Normal data is ample as systems usually work in desired conditions. On the other hand, fault data is rare, and in many conditions, there is no data recorded for the fault classes. Accessing fault data is crucial for developing data-driven fault diagnosis tools that can improve both the performance and safety of operations. To this end, a novel algorithm based on Conditional Generative Adversarial Networks (CGANs) is introduced. Trained on the normal and fault data on any actual fault conditions, this algorithm generates fault data from normal data of target conditions. The proposed method is validated on a real-world bearing dataset, and fault data are generated for different conditions. Several state-of-the-art classifiers and visualization models are implemented to evaluate the quality of the synthesized data. The results demonstrate the efficacy of the proposed algorithm.
翻译:轴承是旋转机器中容易发生意外故障的重要组成部分之一。 因此, 发生故障诊断和状况监测对于减少许多行业的运行成本和故障时间至关重要。 在各种生产条件下, 轴承可以在一系列载荷和速度下操作, 造成与每个故障类型相关的不同振动模式。 正常数据是充足的, 因为系统通常在理想条件下运作。 另一方面, 断层数据是罕见的, 在许多条件下, 没有记录过错类别的数据。 获取断层数据对于开发数据驱动的断层诊断工具至关重要, 它可以提高操作的性能和安全性。 为此, 采用了基于“ 有条件的基因对流网络” 的新算法。 根据正常和断层数据, 这种算法根据正常的目标条件数据生成断层数据。 拟议的方法在包含数据集的真实世界中验证, 并为不同条件生成过错数据。 实施了几个州级分类和可视化模型来评估合成数据的质量。 结果表明, 拟议的算法的有效性。