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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Mechanical Fault Diagnosis of an On-Load Tap Changer by Applying Cuckoo Search Algorithm-Based Fuzzy Weighted Least Squares Support Vector Machine
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Mechanical Fault Diagnosis of an On-Load Tap Changer by Applying Cuckoo Search Algorithm-Based Fuzzy Weighted Least Squares Support Vector Machine

机译:通过应用Cuckoo搜索算法的模糊加权最小二乘支持向量机的机械故障诊断

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To improve adaptability, feature resolution, and identification accuracy when diagnosing mechanical faults in an on-load tap changer (OLTC) of a transformer, in the present research, wavelet packet energy entropy is used to describe the information comprising vibration signal in the switch process of an OLTC, and a fuzzy weighted least squares support vector machine (CSA-fuzzy weighted LSSVM) model based on the cuckoo search algorithm is proposed to identify mechanical fault types. Specifically, according to the different importance of the sample data in different periods, the idea of fuzzy weighting of training samples is proposed. The cuckoo search algorithm is used to optimise regularisation parameters, kernel function width, and weight control factor of CSA-fuzzy weighted LSSVM. Finally, the real experimental platform for typical mechanical faults of an OLTC is established, and the vibration signals of several typical mechanical faults under different degrees of fatigue are obtained. The results show that the new method achieves a higher accuracy rate of fault identification compared with other common methods. It can better deal with small sample and nonlinear prediction problems and shows higher fitting accuracy than CSA-LSSVM, single LSSVM, and radial basis neural network methods and is thus better suited for mechanical fault diagnosis in OLTCs. This paper presents a new intelligent diagnosis scheme for mechanical faults of on-load tap changers, which can achieve noninterruption and nonintrusive detection. The proposed diagnosis method would change the traditional diagnosis method of the on-load tap changer and improves the power supply quality and the detection efficiency under the premise of ensuring the safety of the staff.
机译:为了提高适应性,特征分辨率和识别准确性在诊断变压器的载荷分接换器(OLTC)中的机械故障时,在本研究中,小波分组能量熵用于描述包括开关过程中的振动信号的信息提出了一种基于CUCKOO搜索算法的模糊加权最小二乘支持向量机(CSA-FUZZY加权LSSVM)模型,以识别机械故障类型。具体地,根据不同时段中的样本数据的不同重要性,提出了训练样本的模糊加权的思想。 Cuckoo搜索算法用于优化CSA-Fuzzy加权LSSVM的正则化参数,内核功能宽度和权重控制系数。最后,建立了用于OLTC的典型机械故障的真实实验平台,获得了几种典型机械故障的振动信号,得到不同程度的疲劳。结果表明,与其他常用方法相比,新方法达到了更高的故障识别率。它可以更好地处理小样本和非线性预测问题,并显示比CSA-LSSVM,单个LSSVM和径向基神经网络方法更高的拟合精度,因此更适合OLTC中的机械故障诊断。本文介绍了一个新的智能诊断方案,用于载有载开换变换器的机械故障,可实现不间断和非功能性检测。所提出的诊断方法将改变传统的载荷分接开关的诊断方法,提高了确保员工安全的前提下的电源质量和检测效率。

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