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Fourier transform and correlation-based feature selection for fault detection of automobile engines

机译:用于汽车发动机故障检测的基于傅立叶变换和相关性的特征选择

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Recently, research on effective Acoustic Emission (AE)-based methods for condition monitoring and fault detection has attracted many researchers. Due to the complex properties of acoustic signals, effective features for fault detection cannot be easily extracted from the raw acoustic signals. To extract representative features, signal processing techniques play an important role. One of the commonest techniques is Fast Fourier Transform (FFT). This method depends on the variations in frequency domain to distinguish different operating conditions of a machine. In this study, the intension is to categorize the acoustic signals into healthy and faulty classes. Acoustic emission signals are generated from four different automobile engines in both healthy and faulty conditions. The investigated fault is within the ignition system of the engines while they might suffer from other possible problems as well that may affect the generated acoustic signals. The energy of FFT coefficients of acoustic signals for different frequency bands are calculated as features. Correlation-based Feature Selection (CFS) algorithm is used to reduce the dimensionality of the dataset. The case study is carried-out on 4 different types of automobiles using 480 automobiles to prove the independency of the proposed approach on the type of the automobile. Classification results are reported to be around 88 percent accuracy.
机译:最近,对基于有效声发射(AE)的状态监测和故障检测方法的研究吸引了许多研究人员。由于声信号的复杂特性,无法轻易地从原始声信号中提取有效的故障检测功能。为了提取代表性特征,信号处理技术起着重要作用。最常见的技术之一是快速傅立叶变换(FFT)。此方法取决于频域的变化,以区分机器的不同运行条件。在这项研究中,目的是将声音信号分类为健康和故障类别。在健康状态和故障状态下,都会从四种不同的汽车发动机中产生声发射信号。被调查的故障在发动机的点火系统内,而它们可能还遭受其他可能影响生成的声音信号的问题。计算不同频带的声信号的FFT系数的能量作为特征。基于关联的特征选择(CFS)算法用于减少数据集的维数。通过使用480辆汽车对4种不同类型的汽车进行了案例研究,以证明所提出的方法与汽车类型无关。据报道,分类结果的准确性约为88%。

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