Abstract

Vibration analysis is considered as an effective and reliable nondestructive technique for monitoring the operation conditions of elevator control transformer. In the paper, a novel model using the Empirical Mode Decomposition (EMD), the empirical wavelet packet transform, the mind evolutionary algorithm (MEA), and the backpropagation (BP) neural network is proposed for elevator control transformer fault diagnosis. Firstly, the collected signal is smoothed by EMD, the intrinsic mode function (IMF) components with large noise are determined according to the correlation coefficient, the wavelet adaptive threshold denoising algorithm is used to process the noisy IMF components, and the IMF components before and after processing and its residual component are reconstructed to obtain the denoised signal. Then, the denoised signal is transformed by empirical wavelet packet transform to extract the energy ratio and energy entropy features in the wavelet packet coefficients. Finally, a fault diagnosis model composed of MEA and BP neural network is developed, which avoids the problems of premature convergence and poor diagnosis effect. The experimental results show that the proposed model has a remarkable performance with an average root mean square error of 0.00672 and the average diagnosis accuracy of 90.8%, which is better than classic BP neural network.

Highlights

  • Up to now, many monitoring techniques and detection methods about transformer fault have been proposed

  • The empirical wavelet packet (EWP) technique is applied to time series and Daubechies orthogonal wavelet db10 is used as wavelet basis function. e steps of extracting energy ratio and energy entropy features by EWP can be described as follows: (1) e vibration signal processed by noise reduction is decomposed by EWP with 3 levels

  • In order to realize fault detection of elevator transformer vibration, a fault diagnosis analysis method combining empirical wavelet packet transform and mind evolutionary algorithm (MEA)-BP neural network (BPNN) was proposed based on transformer surface vibration signals in this paper

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Summary

Monitoring Device and Method

A condition monitoring system of elevator control transformer on the basis of vibration signal analysis is designed, which includes current sensor, voltage sensor, vibration sensor, temperature sensor, data acquisition card, and computer. As can be seen from the figure, when the elevator control transformer fails, the fluctuation of its vibration signal is irregular and no fault information can be extracted from it. Erefore, it is necessary to process the vibration signal to obtain the characteristics that can reflect the fault of elevator control transformer.

Theory
Experimental Results
Experimental Analysis and Discussion
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