首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Fault detection and diagnosis of a 12-cylinder trainset diesel engine based on vibration signature analysis and neural network
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Fault detection and diagnosis of a 12-cylinder trainset diesel engine based on vibration signature analysis and neural network

机译:基于振动特征分析和神经网络的基于振动特征和神经网络的12缸拉丁柴油机故障检测与诊断

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This paper presents a condition monitoring and combustion fault detection technique for a 12-cylinder 588?kW trainset diesel engine based on vibration signature analysis using fast Fourier transform, discrete wavelet transform, and artificial neural network. Most of the conventional fault diagnosis techniques in diesel engines are mainly based on analyzing the difference of vibration signals amplitude in the time domain or frequency spectrum. Unfortunately, for complex engines, the time- or frequency-domain approaches do not provide appropriate features solely. In the present study, vibration signals are captured from both intake manifold and cylinder heads of the engine and were analyzed in time-, frequency-, and time–frequency domains. In addition, experimental data of a 12-cylinder 588?kW diesel engine (of a trainset) are captured and the proposed method is verified via these data. Results show that power spectra of vibration signals in the low-frequency range reliably distinguish between normal and faulty conditions. However, they cannot identify the fault location. Hence, a feature extraction method based on discrete wavelet transform and energy spectrum is proposed. The extracted features from discrete wavelet transform are used as inputs in a neural network for classification purposes according to the location of sensors and faults. The experimental results verified that vibration signals acquired from intake manifold have more potential in fault detection. In addition, the capacity of discrete wavelet transform and artificial neural network in detection and diagnosis of faulty cylinders subjected to the abnormal fuel injection was revealed in a complex diesel engine. Beside condition monitoring of the engine, a two-step fault detection method is proposed, which is more reliable than other one-step methods for complex engines. The average condition monitoring performance is from 93.89% up to 99.17%, based on fault location and sensor placement, and the minimum classification performance is 98.34%.
机译:本文基于使用快速傅里叶变换,离散小波变换和人工神经网络,基于振动特征分析的12缸588?KW Trainset柴油发动机的条件监测和燃烧故障检测技术。柴油发动机中的大多数传统故障诊断技术主要基于分析时域或频谱中的振动信号幅度的差异。遗憾的是,对于复杂的发动机,时间或频域方法不能单独提供适当的功能。在本研究中,振动信号由发动机的进气歧管和气缸盖捕获,并且在时间,频率和时频域中分析。另外,捕获12缸588?kw柴油发动机(Trainset)的实验数据,并且通过这些数据验证所提出的方法。结果表明,低频范围中的振动信号的功率光谱可靠地区分正常和故障条件。但是,它们无法识别故障位置。因此,提出了一种基于离散小波变换和能谱的特征提取方法。根据传感器和故障的位置,来自离散小波变换的提取特征用作神经网络中的输入以进行分类目的。实验结果验证了从进气歧管获取的振动信号具有更大的故障检测。此外,在复杂的柴油发动机中揭示了在复杂的柴油机中检测和诊断诊断的离散小波变换和人工神经网络的容量。在发动机的状态监测旁边,提出了一种两步故障检测方法,比复杂发动机的其他一步法更可靠。平均条件监测性能为93.89%,基于故障定位和传感器放置,最小分类性能为93.89%,高达99.17%。

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