Title :
Fault Detection and Classification in Medium Voltage DC Shipboard Power Systems With Wavelets and Artificial Neural Networks
Author :
Weilin Li ; Monti, Antonello ; Ponci, Ferdinanda
Author_Institution :
Dept. of Electr. Eng., Northwestern Polytech. Univ., Xi´an, China
Abstract :
This paper proposes a fault detection and classification method for medium voltage DC (MVDC) shipboard power systems (SPSs) by integrating wavelet transform (WT) multiresolution analysis (MRA) technique with artificial neural networks (ANNs). The MVDC system under consideration for future all-electric ships presents a range of new challenges, in particular the fault detection and classification issues addressed in this paper. The WT-MRA and Parseval´s theorem are employed in this paper to extract the features of different faults. The energy variation of the fault signals at different resolution levels are chosen as the feature vectors. As a result of analysis and comparisons, the Daubechies 10 (db10) wavelet and scale 9 are the chosen wavelet function and decomposition level. Then, ANN is adopted to automatically classify the fault types according to the extracted features. Different fault types, such as short circuit faults on both dc bus and ac side, as well as ground fault, are analyzed and tested to verify the effectiveness of the proposed method. These faults are simulated in real time with a digital simulator and the data are then initially analyzed with MATLAB. The case study is a notional MVDC SPS model, and promising classification accuracy can be obtained according to simulation results. Finally, the proposed fault detection algorithm is implemented and tested on a real-time platform, which enables it for future practical use.
Keywords :
decomposition; fault diagnosis; feature extraction; marine power systems; mathematics computing; power engineering computing; power system faults; signal resolution; wavelet neural nets; wavelet transforms; AC bus side; ANN; DC bus side; Daubechies wavelet function; MATLAB digital simulator; MRA technique; MVDC SPS model; Parseval theorem; WT; all-electric ship; artificial neural network; decomposition level; fault classification; fault detection algorithm; fault signals resolution; feature extraction; medium voltage DC shipboard power system; multiresolution analysis technique; short circuit fault; wavelet neural network; Electrical fault detection; Fault detection; Feature extraction; Multiresolution analysis; Power systems; Artificial neural networks (ANNs); fault detection and classification; medium voltage dc (MVDC) system; wavelet transform (WT)-based multiresolution analysis (MRA); wavelet transform (WT)-based multiresolution analysis (MRA).;
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2014.2313035