A comparative experimental research on the diagnosis of tooth root cracks in asymmetric spur gear pairs with a one-dimensional convolutional neural network

IF 4.5 1区 工程技术 Q1 ENGINEERING, MECHANICAL
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引用次数: 0

Abstract

Gearboxes transfer rotational motion and handle precision functionalities in many fields, including aviation, wind turbines, and industrial services. Their health management is essential to minimize workforce risks, increase the level of safety, and avoid machine breakdowns. From this standpoint, the present experimental research work developed a convolutional neural network-based method for diagnosing different levels of tooth root cracks (25 %-50 %-75 %-100 %) for symmetric (20°/20°) and asymmetric (20°/30°) profiled gear pairs. A series of vibration experiments were performed on a one-stage spur gearbox to achieve this by using a tri-axial accelerometer under variable working loads. The main purpose of this experimental research study is to explore the influence of the tooth profile on spur gears’ vibration responses and whether utilizing an asymmetric tooth profile would positively impact a deep learning algorithm's classification accuracy to add to the enhancements it provides in terms of fatigue life, mesh stiffness, and impact strength. Experimental results revealed that the overall classification accuracy could be increased by 7.712 % by feeding the proposed deep learning model with vibration data measured using test samples with asymmetric teeth.

利用一维卷积神经网络诊断非对称正齿轮齿根裂纹的对比实验研究
在航空、风力涡轮机和工业服务等许多领域,齿轮箱都能传递旋转运动和处理精密功能。齿轮箱的健康管理对于最大限度地降低劳动力风险、提高安全水平和避免机器故障至关重要。从这个角度出发,本实验研究工作开发了一种基于卷积神经网络的方法,用于诊断对称(20°/20°)和非对称(20°/30°)齿形齿轮对的不同程度的齿根裂纹(25 %-50 %-75 %-100%)。为此,我们使用三轴加速度计在可变工作载荷下对一级直齿轮变速箱进行了一系列振动实验。本实验研究的主要目的是探索齿廓对正齿轮振动响应的影响,以及利用非对称齿廓是否会对深度学习算法的分类准确性产生积极影响,从而提高其在疲劳寿命、啮合刚度和冲击强度方面的性能。实验结果表明,将使用非对称轮齿测试样本测量的振动数据输入所提出的深度学习模型后,整体分类准确率可提高 7.712%。
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来源期刊
Mechanism and Machine Theory
Mechanism and Machine Theory 工程技术-工程:机械
CiteScore
9.90
自引率
23.10%
发文量
450
审稿时长
20 days
期刊介绍: Mechanism and Machine Theory provides a medium of communication between engineers and scientists engaged in research and development within the fields of knowledge embraced by IFToMM, the International Federation for the Promotion of Mechanism and Machine Science, therefore affiliated with IFToMM as its official research journal. The main topics are: Design Theory and Methodology; Haptics and Human-Machine-Interfaces; Robotics, Mechatronics and Micro-Machines; Mechanisms, Mechanical Transmissions and Machines; Kinematics, Dynamics, and Control of Mechanical Systems; Applications to Bioengineering and Molecular Chemistry
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