A Time Series Prediction-Based Method for Rotating Machinery Detection and Severity Assessment

Weirui Zhang, Zeru Sun, Dongxu Lv, Yanfei Zuo, Haihui Wang, Rui Zhang
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Abstract

Monitoring the condition of rotating machinery is critical in aerospace applications like aircraft engines and helicopter rotors. Faults in these components can lead to catastrophic outcomes, making early detection essential. This paper proposes a novel approach using vibration signals and time series prediction methods for fault detection in rotating aerospace machinery. By extracting relevant features from vibration signals and using prediction models, fault severity can be effectively quantified. Our experimental results show that the proposed method has potential in early fault detection and is applicable to various types of bearing faults and the different statuses of these faults under complex running conditions, achieving very good generalization ability.
基于时间序列预测的旋转机械检测和严重性评估方法
在飞机发动机和直升机转子等航空航天应用中,监测旋转机械的状态至关重要。这些部件的故障可能导致灾难性后果,因此早期检测至关重要。本文提出了一种利用振动信号和时间序列预测方法进行旋转航空航天机械故障检测的新方法。通过从振动信号中提取相关特征并使用预测模型,可以有效量化故障严重程度。我们的实验结果表明,所提出的方法具有早期故障检测的潜力,适用于各种类型的轴承故障以及这些故障在复杂运行条件下的不同状态,实现了很好的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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