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Data-Driven Fault Diagnosis for Rolling Bearing Based on DIT-FFT and XGBoost

机译:基于DIT-FFT和XGBoost的滚动轴承数据驱动的故障诊断

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摘要

The rolling bearing is an extremely important basic mechanical device. The diagnosis of its fault play an important role in the safe and stable operation of the mechanical system. This study proposed an approach, based on the Fast Fourier Transform (FFT) with Decimation-In-Time (DIT) and XGBoost algorithm, to identify the fault type of bearing quickly and accurately. Firstly, the original vibration signal of rolling bearing was transformed by DIT-FFT and divided into the training set and test set. Next, the training set was used to train the fault diagnosis XGBoost model, and the test set was used to validate the well-trained XGBoost model. Finally, the proposed approach was compared with some common methods. It is demonstrated that the proposed approach is able to diagnose and identify the fault type of bearing quickly with almost 99% accuracy. It is more accurate than Machine Learning (89.88%), Ensemble Learning (93.25%), and Deep Learning (95%). This approach is suitable for the fault diagnosis of rolling bearing.
机译:滚动轴承是一个极其重要的基本机械装置。其故障的诊断在机械系统的安全和稳定运行中起重要作用。本研究提出了一种基于快速傅里叶变换(FFT)的方法,具有抽取时间(DIT)和XGBoost算法,可以快速准确地识别故障类型的轴承。首先,通过DIT-FFT改变滚动轴承的原始振动信号,并分成训练集和测试集。接下来,使用训练集训练故障诊断XGBoost模型,测试集用于验证良好训练的XGBoost模型。最后,将所提出的方法与一些常用方法进行比较。结果证明,该方法能够快速诊断和识别故障类型的轴承,精度近99%。它比机器学习更准确(89.88%),集合学习(93.25%)和深度学习(95%)。这种方法适用于滚动轴承的故障诊断。

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