基于小波包和极限学习机的汽车发动机失火故障识别 |
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引用本文: | 高远,李一博. 基于小波包和极限学习机的汽车发动机失火故障识别[J]. 测试科学与仪器, 2017, 0(4): 384-395. DOI: 10.3969/j.issn.1674-8042.2017.04.012 |
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作者姓名: | 高远 李一博 |
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作者单位: | 天津大学 精密测量技术与仪器国家重点实验室,天津,300072 |
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摘 要: | 针对缸盖振动信号的非平稳特性,提出了基于小波包相关系数和极限学习机的汽车发动机失火故障诊断系统.首先,对原始信号进行小波包分解,然后计算得到每个样本的能量熵和每个样本各子频带重构信号与原始信号的相关性系数.分别利用相关系数法和能量熵融合峭度的方法建立特征向量,随后输入到BP神经网络和极限学习机中进行训练和测试.实验结果表明,该方法可以有效地反映故障产生的差异并准确地识别单缸失火故障,具有精度高、训练时间短的优点.
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关 键 词: | 汽车发动机 小波包 相关系数 极限学习机 失火故障识别 |
Misfire identification of automobile engines based on wavelet packet and extreme learning machine |
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Abstract: | Due to non-stationary characteristics of the vibration signal acquired from cylinder head,a misfire fault diagnosis sys-tem of automobile engines based on correlation coefficient gained by wavelet packet and extreme learning machine (ELM)is proposed.Firstly,the original signal is decomposed by wavelet packet,and correlation coefficients between the reconstructed signal of each sub-band and the original signal as well as the energy entropy of each sample are obtained.Then,the eigenvec-tors established by the correlation coefficients method and the energy entropy method fused with kurtosis are inputted to the four kinds of classifiers including BP neural network,KNN classifier,support vector machine and ELM respectively for train-ing and testing.Experimental results show that the method proposed in this paper can effectively reflect the differences that the fault produces and identify the single-cylinder misfire accurately,which has the advantages of higher accuracy and shorter train-ing time. |
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Keywords: | automobile engine wavelet packet correlation coefficient extreme learning machine (ELM) misfire fault identifi-cation |
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