Partial Discharge (PD) pattern recognition plays an important part in electrical equipment fault diagnosis and maintenance. Feature extraction could greatly affect recognition results. Traditional PD feature extraction methods suffer from high-dimension calculation and signal attenuation. In this study, a novel feature extraction method based on Ensemble Empirical Mode Decomposition (EEMD) and Sample Entropy (SamEn) is proposed. In order to reduce the influence of noise, a wavelet method is applied to PD de-noising. Noise Rejection Ratio (NRR) and Mean Square Error (MSE) are adopted as the de-noising indexes. With EEMD, the de-noised signal is decomposed into a finite number of Intrinsic Mode Functions (IMFs). The IMFs, which contain the do...
Partial discharge (PD) measurements are an important tool for assessing the condition of power equip...
Partial discharge (PD) diagnostics is considered a major and effective tool for the monitoring of in...
Power outages often happen as a result of electrical insulation breakdown in power equipment. Partia...
Partial Discharge (PD) pattern recognition plays an important part in electrical equipment fault dia...
Partial Discharge (PD) pattern recognition plays an important part in electrical equipment fault dia...
In this paper we investigate the application of feature extraction and machine learning techniques t...
Electro-Magnetic Interference (EMI) is a measurement technique for Partial Discharge (PD) signals wh...
Partial discharge (PD) is caused by the deterioration of insulation materials. Its detection and acc...
Partial discharge (PD) occurs when insulation deterioration happens in electrical apparatus. It is o...
Electricity has a crucial function in contemporary civilization. The power grid must be stable to en...
This paper presents an ensemble-boosting algorithm (EBA) for classifying partial discharge (PD) patt...
This paper proposes a method for the identification of different partial discharges (PDs) sources th...
This work exploits four entropy measures known as Sample, Permutation, Weighted Permutation, and Dis...
Over the past two decades, wavelet-based techniques have been widely used to extract partial dischar...
Partial discharge (PD) measurements are an important tool for assessing the condition of power equip...
Partial discharge (PD) diagnostics is considered a major and effective tool for the monitoring of in...
Power outages often happen as a result of electrical insulation breakdown in power equipment. Partia...
Partial Discharge (PD) pattern recognition plays an important part in electrical equipment fault dia...
Partial Discharge (PD) pattern recognition plays an important part in electrical equipment fault dia...
In this paper we investigate the application of feature extraction and machine learning techniques t...
Electro-Magnetic Interference (EMI) is a measurement technique for Partial Discharge (PD) signals wh...
Partial discharge (PD) is caused by the deterioration of insulation materials. Its detection and acc...
Partial discharge (PD) occurs when insulation deterioration happens in electrical apparatus. It is o...
Electricity has a crucial function in contemporary civilization. The power grid must be stable to en...
This paper presents an ensemble-boosting algorithm (EBA) for classifying partial discharge (PD) patt...
This paper proposes a method for the identification of different partial discharges (PDs) sources th...
This work exploits four entropy measures known as Sample, Permutation, Weighted Permutation, and Dis...
Over the past two decades, wavelet-based techniques have been widely used to extract partial dischar...
Partial discharge (PD) measurements are an important tool for assessing the condition of power equip...
Partial discharge (PD) diagnostics is considered a major and effective tool for the monitoring of in...
Power outages often happen as a result of electrical insulation breakdown in power equipment. Partia...