The partial discharge (PD) is the most common fault of transformers, which is the main factor affecting the stable operation of transformers. Therefore, the PD should be monitored and identified timely to improve the reliability of the transformers. In this paper, a transformer PD pattern recognition algorithm based on the gray-level co-occurrence matrix of optimal parameters and support vector machine (GLCMOP-SVM) is proposed. Firstly, the GLCM of optimal parameters (GLCMOP) is proposed to be determined by calculating the proportion of the off-diagonal elements (PODE) in GLCM. The GLCMOP has the advantage of avoiding the subjectivity of parameter selection and simplifying the calculation process. Then, the phase-resolved partial discharge ...
Partial discharge (PD) analysis is an important technique for diagnosis and online monitoring of tra...
This article presents an intelligent diagnosis and classification method for power transformer fault...
This paper presents a novel pattern recognition approach based on a four-layer artificial neural net...
Partial discharge (PD) measurement and identification have great importance to condition monitoring ...
The power system on the offshore platform is of great importance since it is the power source for oi...
Partial discharge (PD) measurement has been widely adopted for condition assessment of transformers....
Abstract The traditional diagnosis methods for the multisource partial discharge in transformer have...
in this paper, the partial discharge current signals (pulses), along with pattern recognition method...
Abstract: Partial discharge (PD) measurement and recognition is a significant tool for potential fai...
This thesis details the application of machine based learning techniques to partial discharge (PD) d...
Partial discharge (PD) source classification aims to identify the types of defects causing discharge...
Abstract: Partial discharge (PD) measurement and recognition is a significant tool for potential fai...
This paper investigates a new multi-PD-source discrimination method using machine learning technique...
Partial discharge (PD) has a significant effect on the insulation performance of power apparatus in ...
The ultra high voltage direct current (UHVDC) transmission system has advantages in delivering elect...
Partial discharge (PD) analysis is an important technique for diagnosis and online monitoring of tra...
This article presents an intelligent diagnosis and classification method for power transformer fault...
This paper presents a novel pattern recognition approach based on a four-layer artificial neural net...
Partial discharge (PD) measurement and identification have great importance to condition monitoring ...
The power system on the offshore platform is of great importance since it is the power source for oi...
Partial discharge (PD) measurement has been widely adopted for condition assessment of transformers....
Abstract The traditional diagnosis methods for the multisource partial discharge in transformer have...
in this paper, the partial discharge current signals (pulses), along with pattern recognition method...
Abstract: Partial discharge (PD) measurement and recognition is a significant tool for potential fai...
This thesis details the application of machine based learning techniques to partial discharge (PD) d...
Partial discharge (PD) source classification aims to identify the types of defects causing discharge...
Abstract: Partial discharge (PD) measurement and recognition is a significant tool for potential fai...
This paper investigates a new multi-PD-source discrimination method using machine learning technique...
Partial discharge (PD) has a significant effect on the insulation performance of power apparatus in ...
The ultra high voltage direct current (UHVDC) transmission system has advantages in delivering elect...
Partial discharge (PD) analysis is an important technique for diagnosis and online monitoring of tra...
This article presents an intelligent diagnosis and classification method for power transformer fault...
This paper presents a novel pattern recognition approach based on a four-layer artificial neural net...