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Rotating Machinery Diagnostics using Deep Learning on Orbit Plot Images

机译:使用深度学习在轨道绘图图像上旋转机械诊断

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Although the orbit analysis (orbit shape and size) is commonly used to diagnose rotating machinery, the diagnosis heavily depends on the expert knowledge or experience due to the difficulties of extracting mathematical features for data-driven approaches. Therefore, in this paper, we propose an autonomous orbit pattern recognition algorithm using the deep learning method on shaft orbit shape images. In details, the convolutional neural network is implemented to construct weights between neurons and to generate the entire structure of the neural network. Then, the created network enables us to classify fault modes of rotating machinery via orbit images. Furthermore, we demonstrate the proposed framework through a rotating testbed.
机译:虽然轨道分析(轨道形状和尺寸)通常用于诊断旋转机械,但诊断严重取决于专家知识或经验,因为提取数据驱动方法的数学特征困难。因此,在本文中,我们在轴轨道形状图像上提出了一种自主轨道模式识别识别算法。详细地,卷积神经网络被实现为构建神经元之间的重量并产生神经网络的整个结构。然后,创建的网络使我们能够通过轨道图像对旋转机械的故障模式进行分类。此外,我们通过旋转测试展示了所提出的框架。

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