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Detection of Combined Gear-Bearing Fault in Single Stage Spur Gear Box Using Artificial Neural Network

机译:人工神经网络检测单级浇口齿轮箱中组合轴承故障

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Gears and bearings are important components of almost every machines used in industrial environment. Hence detection of defect in any of these must be detected in advance to avoid catastrophic failure. This paper aims to address the effect of bearing defect on gear vibration signature and effect gear defect on bearing vibration signature. Also its purpose is to make vibration analysis of single stage spur gear box, when both gear and bearing are defective. A condition monitoring set up is designed for analyzing the defect in outer race of bearing and damaged tooth of gear. MATLAB is used for feature extraction and neural network is used for diagnosis. In the literature, many authors have analyzed defects in bearings and gears separately. But it is found that the real situation may be more complex. The work presents a laboratory investigation carried out through an experimental set-up for the study of combined gear-bearing fault. This paper proposes a novel approach of damage detection in which defects in multiple components are analyzed using vibration signal.
机译:齿轮和轴承是几乎每种工业环境中使用的机器的重要组成部分。因此,必须预先检测任何这些中的缺陷以避免灾难性失败。本文旨在解决轴承缺陷对轴承振动特征的齿轮振动特征和效果齿轮缺陷的影响。其目的是当齿轮和轴承有缺陷时,它的目的是对单级正齿轮箱进行振动分析。一种情况监测设置的设计是为了分析轴承和损坏齿轮外圈的缺陷。 MATLAB用于特征提取,神经网络用于诊断。在文献中,许多作者分别分析了轴承和齿轮的缺陷。但结果发现,实际情况可能更复杂。该工作介绍了通过实验设置进行的实验室调查,用于研究组合轴承故障。本文提出了一种新的损伤检测方法,其中使用振动信号分析多个组件中的缺陷。

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