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首页> 外文期刊>Mechanism and Machine Theory: Dynamics of Machine Systems Gears and Power Trandmissions Robots and Manipulator Systems Computer-Aided Design Methods >Uncertainty quantification in deep convolutional neural network diagnostics of journal bearings with ovalization fault
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Uncertainty quantification in deep convolutional neural network diagnostics of journal bearings with ovalization fault

机译:椭圆化故障轴承轴颈轴承深卷积神经网络诊断的不确定性量化

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摘要

Bearings play a crucial role in machine longevity and is, at the same time, one of the most critical sources of failure in rotor dynamics. Particularly for journal bearings, it is not completely understood how specific damages may influence the response of the rotating system. Consequently, the identification of hydrodynamic bearing faults is challenging. Most of the literature relies on large amounts of training data collections from physical experiments or from the field, which are high in cost. This paper offers a deep learning approach to identify ovalization faults aiming to develop condition monitoring model-based strategies applied to hydrodynamic journal bearings. Therefore, a numerical model was developed to simulate the ovalization fault conditions in order to build training datasets. Afterwards, a deep convolutional neural network algorithm was trained with the generated datasets and used to predict the faults conditions. Finally, the identification performance was evaluated statistically regarding the true-positive identification by both probability density function and subjective logic. The classification accuracy showed promising results for training the machine learning algorithms with simulated data. (C) 2020 Elsevier Ltd. All rights reserved.
机译:轴承在机器长寿中发挥着至关重要的作用,同时是转子动力学中最关键的失败源之一。特别是对于轴颈轴承,不完全理解具体损坏可能影响旋转系统的响应。因此,鉴定流体动力轴承故障是具有挑战性的。大多数文献依赖于来自物理实验或来自现场的大量培训数据收集,这符合成本高。本文提供了深入的学习方法来识别椭圆化故障,旨在开发适用于流体动力学轴承的条件监测模型的策略。因此,开发了一个数值模型来模拟椭圆化故障条件,以便构建训练数据集。然后,使用生成的数据集接受深度卷积神经网络算法,并用于预测故障条件。最后,通过概率密度函数和主观逻辑统计地评估识别性能。分类准确性显示出具有模拟数据的机器学习算法的有希望的结果。 (c)2020 elestvier有限公司保留所有权利。

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