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基于极限梯度提升和振动信号高精度时频信息的柴油机智能故障诊断

Intelligent Fault Diagnosis of Diesel Engines via Extreme Gradient Boosting and High-Accuracy Time-Frequency Information of Vibration Signals.

作者信息

Tao Jianfeng, Qin Chengjin, Li Weixing, Liu Chengliang

机构信息

State Key Laboratory of Mechanical System and Vibration, School of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.

出版信息

Sensors (Basel). 2019 Jul 25;19(15):3280. doi: 10.3390/s19153280.

Abstract

Accurate and timely misfire fault diagnosis is of vital significance for diesel engines. However, existing algorithms are prone to fall into model over-fitting and adopt low energy-concentrated features. This paper presents a novel extreme gradient boosting-based misfire fault diagnosis approach utilizing the high-accuracy time-frequency information of vibration signals. First, diesel engine misfire tests were conducted under different spindle speeds, and the corresponding vibration signals were acquired via a triaxial accelerometer. The time-domain features of signals were extracted by using a time-domain statistics method, while the high-accuracy time-frequency domain features were obtained via the high-resolution multisynchrosqueezing transform. Thereafter, considering the nonlinearity and high dimensionality of the original characteristic data sets, the locally linear embedding method was employed for feature dimensionality reduction. Eventually, to avoid model overfitting, the extreme gradient boosting algorithm was utilized for diesel engine misfire fault diagnosis. Experiments under different spindle speeds and comprehensive comparisons with other evaluation methods were conducted to demonstrate the effectiveness of the proposed extreme gradient boosting-based misfire diagnosis method. The results verify that the highest classification accuracy of the proposed extreme gradient boosting-based algorithm is up to 99.93%. Simultaneously, the classification accuracy of the presented approach is approximately 24.63% higher on average than those of algorithms that use wavelet packet-based features. Moreover, it is shown that it obtains the minimum root mean squared error and can effectively prevent the model from falling into overfitting.

摘要

准确及时地诊断柴油机失火故障具有至关重要的意义。然而,现有算法容易陷入模型过拟合,且采用的特征能量集中度低。本文提出一种基于极端梯度提升的新型失火故障诊断方法,利用振动信号的高精度时频信息。首先,在不同主轴转速下进行柴油机失火测试,并通过三轴加速度计采集相应的振动信号。利用时域统计方法提取信号的时域特征,同时通过高分辨率多同步挤压变换获得高精度时频域特征。此后,考虑到原始特征数据集的非线性和高维性,采用局部线性嵌入方法进行特征降维。最后,为避免模型过拟合,利用极端梯度提升算法进行柴油机失火故障诊断。进行了不同主轴转速下的实验,并与其他评估方法进行了综合比较,以证明所提出的基于极端梯度提升的失火诊断方法的有效性。结果验证了所提出的基于极端梯度提升的算法的最高分类准确率高达99.93%。同时,所提出方法的分类准确率平均比使用基于小波包特征的算法高约24.63%。此外,结果表明该方法获得了最小均方根误差,能够有效防止模型陷入过拟合。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/404a/6695824/e57d4192999c/sensors-19-03280-g001.jpg

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