Comparative Analysis an Early Fault Diagnosis Approaches in Rotating Machinery by Convolution Neural Network

K. P.
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Abstract

In several industrial applications, rotating machinery is widely utilized in various forms. A growing amount of study, in the academic and industrial fields, as a potential sector for the confidentiality of modern industrial labor systems, has been drawing early fault diagnosis (EFD) techniques. However, EFD plays an essential role in providing sufficient information for performing maintenance activities, preventing and reducing financial loss and disastrous defaults. Many of the existing techniques for identifying rotations were ineffective. For the identification of spinning machine faults, many in-depth learning methods have recently been developed. This research report has included and analysed a number of research publications that have higher precision than standard algorithms for detecting early failures in rotating machinery. In addition to the artificial intelligence monitoring (AIM) model, detecting the defects in rotating machine was also realized through the simulation output. AIM framework model is also testing the rotating machinery in three different stages, which is based on the vibration signal obtained from the bearing system and further it has been trained with the neural network preceding. Compared to other traditional algorithms, the AIM model has achieved greater precision and also the other performance measures are tabulated in the result and discussion section.
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基于卷积神经网络的旋转机械早期故障诊断方法比较分析
在一些工业应用中,旋转机械以各种形式被广泛使用。早期故障诊断(EFD)技术作为现代工业劳动制度保密的潜在领域,在学术和工业领域的研究越来越多。然而,EFD在为执行维护活动提供足够的信息,防止和减少财务损失和灾难性违约方面发挥着重要作用。许多现有的识别旋转的技术是无效的。针对纺纱机故障的识别,近年来发展了许多深度学习方法。该研究报告包括并分析了许多研究出版物,这些出版物在检测旋转机械早期故障方面比标准算法具有更高的精度。除了人工智能监测(AIM)模型外,还通过仿真输出实现了旋转机械缺陷的检测。AIM框架模型也在三个不同阶段对旋转机械进行了测试,该模型基于从轴承系统获得的振动信号,并与前面的神经网络进行了训练。与其他传统算法相比,AIM模型达到了更高的精度,其他性能指标在结果和讨论部分中列出。
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