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Automotive Internal-Combustion-Engine Fault Detection and Classification Using Artificial Neural Network Techniques

机译:基于神经网络技术的汽车内燃机故障检测与分类

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摘要

In this paper, an engine fault detection and classification technique using vibration data in the crank angle domain is presented. These data are used in conjunction with artificial neural networks (ANNs), which are applied to detect faults in a four-stroke gasoline engine built for experimentation. A comparative study is provided between the popular backpropagation (BP) method, the Levenberg–Marquardt (LM) method, the quasi-Newton (QN) method, the extended Kalman filter (EKF), and the smooth variable structure filter (SVSF). The SVSF is a relatively new estimation strategy, based on the sliding mode concept. It has been formulated to efficiently train ANNs and is consequently referred to as the SVSF-ANN. The accuracy of the proposed method is compared with the standard accuracy of the Kalman-based filters and the popular BP algorithms in an effort to validate the SVSF-ANN performance and application to engine fault detection and classification. The customizable fault diagnostic system is able to detect known engine faults with various degrees of severity, such as defective lash adjuster, piston chirp (PC), and chain tensioner (CT) problems. The technique can be used at any dealership or assembly plant to considerably reduce warranty costs for the company and manufacturer.
机译:本文提出了一种基于曲轴角域振动数据的发动机故障检测与分类技术。这些数据与人工神经网络(ANN)结合使用,该人工神经网络用于检测为实验而制造的四冲程汽油发动机中的故障。在流行的反向传播(BP)方法,Levenberg-Marquardt(LM)方法,拟牛顿(QN)方法,扩展卡尔曼滤波器(EKF)和光滑可变结构滤波器(SVSF)之间进行了比较研究。 SVSF是基于滑模概念的一种相对较新的估计策略。它被制定来有效地训练ANN,因此被称为SVSF-ANN。为了验证SVSF-ANN的性能并将其应用于发动机故障检测和分类,将所提方法的准确性与基于Kalman的滤波器和流行的BP算法的标准准确性进行了比较。可定制的故障诊断系统能够检测各种严重程度的已知发动机故障,例如,间隙调节器,活塞piston(PC)和链条张紧器(CT)问题。该技术可在任何经销店或装配厂使用,以大大降低公司和制造商的保修成本。

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