Abstract
According to statistic data, machinery faults contribute to largest proportion of High-voltage circuit breaker failures, and traditional maintenance methods exist some disadvantages for that issue. Therefore, based on the wavelet packet decomposition approach and support vector machines, a new diagnosis model is proposed for such fault diagnoses in this study. The vibration eigenvalue extraction is analyzed through wavelet packet decomposition, and a four-layer support vector machine is constituted as a fault classifier. The Gaussian radial basis function is employed as the kernel function for the classifier. The penalty parameter c and kernel parameter δ of the support vector machine are vital for the diagnostic accuracy, and these parameters must be carefully predetermined. Thus, a particle swarm optimization-support vector machine model is developed in which the optimal parameters c and δ for the support vector machine in each layer are determined by the particle swarm algorithm. The validity of this fault diagnosis model is determined with a real dataset from the operation experiment. Moreover, comparative investigations of fault diagnosis experiments with a normal support vector machine and a particle swarm optimization back-propagation neural network are also implemented. The results indicate that the proposed fault diagnosis model yields better accuracy and efficiency than these other models.
Highlights
As a crucial protection and control apparatus in the power grid, a high-voltage circuit breaker (HVCB) is used to cut or connect the circuit according to the received operating signal
The purpose of this study is to propose a particle swarm optimization-support vector machine (PSO-support vector machines (SVMs)) fault diagnosis model to diagnose these operating mechanism faults
The results show that 48 groups of testing samples are diagnosed correctly by the PSO-SVM
Summary
As a crucial protection and control apparatus in the power grid, a high-voltage circuit breaker (HVCB) is used to cut or connect the circuit according to the received operating signal. HVCB faults caused by its operating mechanism can lead to severe damage, such as unscheduled time loss and even circuit destruction [1]. The reliability of HVCBs is closely linked to the stability of the electrical supply provided by the power grid. The maintenance of HVCBs is an important daily task for substations. A traditional scheduled maintenance scheme is widely applied for that purpose, in which the operating mechanism needs to be partially dissembled for. The diagnosis of potential faults concealed inside operating mechanisms is meaningful in enhancing the stability of the electrical power supply to consumers
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