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Early Fault Detection Of Rolling Element Bearings Based On Graph Modeling Of Component Signals

机译:基于分量信号曲线图建模的滚动元件轴承的早期故障检测

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Early fault detection of rolling element bearings (REB) is of vital importance for avoiding unforeseeable machine failures, and it makes helps to operators to shut down the machine for maintenance in the early stage, decrease the operation and maintenance costs. And most importantly, it helps reduce the occurrence of greater safety accidents. Component signal is a powerful tool to describe the non-stationary and non-linear signal at different scale. Motivated by recent advances in graph modeling, we propose a novel method based on graph theory and local mean decomposition (LMD) method in this paper. We first utilized the component signals decomposed by LMD as inputs for graph modeling, thus a better description of signal state with multi-scale information can be obtained. Based on the generated graph, the anomaly score is calculated to support a null hypothesis testing for fault detection. In order to validate the effectiveness of our method, experiments are carried out on the publicly available XJTU-SY database. We also make comparisons with some benchmarking methods, it also shows the robustness and priority of our method.
机译:滚动元件轴承的早期故障检测(REB)对于避免不可预见的机器故障至关重要,并且有助于操作员在早期阶段关闭机器进行维护,降低操作和维护成本。最重要的是,它有助于减少更大的安全事故的发生。组件信号是一种强大的工具,用于描述不同刻度的非静止和非线性信号。通过近期图形建模的进步的动机,我们提出了一种基于图论和本文局部平均分解(LMD)方法的新型方法。我们首先利用LMD分解的分量信号作为图形建模的输入,因此可以获得具有多尺度信息的信号状态的更好描述。基于所生成的图形,计算异常分数以支持用于故障检测的空假设测试。为了验证我们方法的有效性,在公开可用的XJTU-SY数据库上进行实验。我们还与一些基准测试方法进行了比较,它还显示了我们方法的鲁棒性和优先级。

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