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BEARING FAULT DETECTION AND CLASSIFICATION: A FRAMEWORK APPROACH

机译:轴承故障检测和分类:框架方法

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摘要

Bearings are the major components in rotary machinery and very used in the industry. The time for bearing failures identification before interrupting operation or affecting product quality is the basis for most predictive maintenance programs. Taking readings, keeping history of failures and evaluating these results in the operation of rotating equipment on a regular basis, allows to detect possible failures before they become catastrophic. In this way, the damages or defects that are detected before a failure occurs, reduce the repair costs and the time that a rotating machine will be inactive. The bearing failures can generate losses due to machine downtime, unwanted vibration, noise and damage of other components, but if they are detected in time, repair costs and downtime are minimal. This article shows in detail the different detection and classification techniques most used to identify bearing failures such as vibration analysis, artificial neural networks (i.e ANN). convolutional neural networks (i.e CNN) and support vector machine (i.e SVM) and the relevant features of each detection technique.
机译:轴承是旋转机械的主要组成部分,在该行业中非常使用。在中断操作或影响产品质量之前轴承故障识别的时间是最具预测性维护计划的基础。读取读数,保持故障历史并评估这些导致定期运行旋转设备的运行,允许在灾难性之前检测可能的失败。通过这种方式,在发生故障之前检测到的损坏或缺陷,降低了修复成本以及旋转机器将无效的时间。由于机器停机,不需要的振动,噪声和其他组件的损坏,轴承故障可能会产生损失,但如果在时间内检测到它们,则修复成本和停机时间最小。本文详细介绍了最多用于识别轴承故障的不同检测和分类技术,例如振动分析,人工神经网络(INAN)。卷积神经网络(即CNN)和支持向量机(I.E SVM)和每个检测技术的相关特征。

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