Abstract

Fault diagnosis of the marine power station is essential to ensure the normal electric supply for the whole ship. In this paper, a new faults diagnosis technique for the power station using the data fusion technique has been proposed. The vibration signals of the power station were recorded by the multi-channel sensors. The independent component analysis (ICA) was adopted as the data fusion approach to find the characteristic vibration signals of the power station faults. Then the wavelet packet was employed to extract the feature vector of the fused vibration signals. In addition, the oil particle features has been extracted using the oil analysis. Lastly, the least square support vector machines (LS-SVM) was used to recognize the fault patterns of the power station. Moreover, the improved particle swarm optimization (PSO) was employed to enhance the learning ability of the LS-SVM. The experimental tests were implemented in a real ship to evaluate the effectiveness of the proposed diagnosis approach. The diagnosis results have shown that distinguished fault features have been extracted and the fault identification accuracy is acceptable. In addition, the classification rate of the proposed method is superior to the traditional SVM based method. DOI: http://dx.doi.org/10.5755/j01.eee.19.5.2224

Highlights

  • The power station is one of the important electrical equipments in marine power systems

  • The vibration signal recorded under low voltage of the generation is taken as an example to evaluate the performance of the independent component analysis (ICA) based data fusion

  • It is proved that the proposed fault diagnosis method has good classification precision and is considered to be an effective method for the power station fault diagnosis for the marine power system

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Summary

Introduction

The power station is one of the important electrical equipments in marine power systems. The over voltage and low voltage of the generation, the failures in the relay protect equipment and the frequency-power automatical control unit are the main fault types in the power stations, which account for a large proportion in general faults. The health condition monitoring based on the vibration signals of the power stations has been put forward [1]. This technology can evaluate the situation of the power stations through the analysis of the vibration signal characteristics. Many methods have been proposed for the power station

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