This paper describes a method for processing PD data captured using a wide bandwidth non-conventional PD sensor such as a radio frequency current transducer (RFCT). The method allows the discrimination between PD signals from multiple PD sources captured by the single sensor. Fundamentally the discrimination is based on the assumption that PD events from the same source will have very similar signatures in terms of time and frequency information whereas there are measurable differences in the signatures of two PD signals from different sources. To visualize this, it is possible to use a dimension reduction technique such that the features of each signal are represented as a single point in three-dimensional space. This process creates clust...
Partial discharge (PD) measurements are an important tool for assessing the condition of power equip...
Partial discharge (PD) measurements are an important tool for assessing the health of power equipmen...
This paper investigates a new multi-PD-source discrimination method using machine learning technique...
A new wavelet based feature parameter have been developed to represent the characteristics of PD act...
Partial discharges (PDs) are symptomatic of some localised defects in the insulation system of elect...
Partial discharge (PD) signals generated within electrical power equipment can be used to assess the...
The problem of impaired data sets refers to data sets containing a vast majority of unwanted signals...
Partial discharge (PD) signals generated within electrical power equipment can be used to assess the...
Partial discharge (PD) measurements are an important tool for assessing the health of power equipmen...
Two signal classification methods have been examined to discover their suitability for the task of p...
This paper proposes a method for the identification of different partial discharges (PDs) sources th...
Partial discharges (PDs) are a cause of concern in power systems. Many detection methods and analysi...
Partial discharge (PD) signals generated by defects in a transformer insulation can be captured thro...
Partial discharge (PD) detection is a standardized technique to qualify electrical insulation in mac...
The term partial discharge (PD) refers to a partial breakdown in an insulator which bridges two cond...
Partial discharge (PD) measurements are an important tool for assessing the condition of power equip...
Partial discharge (PD) measurements are an important tool for assessing the health of power equipmen...
This paper investigates a new multi-PD-source discrimination method using machine learning technique...
A new wavelet based feature parameter have been developed to represent the characteristics of PD act...
Partial discharges (PDs) are symptomatic of some localised defects in the insulation system of elect...
Partial discharge (PD) signals generated within electrical power equipment can be used to assess the...
The problem of impaired data sets refers to data sets containing a vast majority of unwanted signals...
Partial discharge (PD) signals generated within electrical power equipment can be used to assess the...
Partial discharge (PD) measurements are an important tool for assessing the health of power equipmen...
Two signal classification methods have been examined to discover their suitability for the task of p...
This paper proposes a method for the identification of different partial discharges (PDs) sources th...
Partial discharges (PDs) are a cause of concern in power systems. Many detection methods and analysi...
Partial discharge (PD) signals generated by defects in a transformer insulation can be captured thro...
Partial discharge (PD) detection is a standardized technique to qualify electrical insulation in mac...
The term partial discharge (PD) refers to a partial breakdown in an insulator which bridges two cond...
Partial discharge (PD) measurements are an important tool for assessing the condition of power equip...
Partial discharge (PD) measurements are an important tool for assessing the health of power equipmen...
This paper investigates a new multi-PD-source discrimination method using machine learning technique...