A power transformer is a critical piece of equipment in a power plant for distributing electricity, and it experiences thermal and electrical stresses during operation. Dissolved gas analysis (DGA) remains one of the most effective techniques to monitor the health of oil-filled transformers. Some traditional approaches for interpreting DGAs have been introduced. Occasionally, such approaches leave the state of the transformer uncategorized. This study proposed data-driven approaches for a fault diagnosis system based on DGA data using support vector machine (SVM). SVM is known for its robustness, good generalization capability, and unique global optimum solutions, particularly when data is limited. Backpropagation neural networks ...
Compared with conventional methods of fault diagnosis for power transformers, which have defects suc...
Dissolved gas analysis (DGA) is the standard technique to diagnose the fault types of oil-immersed p...
Missing values are prevalent in real-world datasets and they may reduce predictive performance of a ...
The Dissolved Gas Analysis (DGA) is utilized as a test for the detection of incipient prob-lems in t...
Missing values are prevalent in real-world datasets and they may reduce predictive performance of a ...
Power transformers represent one of the most abundant and expensive components in the electric power...
In South Africa, the growing power demand, challenges of having idle infrastructure, and power deliv...
Abstract — Power transformers are important equipments in power system. Smooth functioning is the ke...
This paper presents an intelligent fault classification approach for power transformer dissolved gas...
One of the most crucial parts of the electrical grid is the power transformer. Due to the high cost ...
Fault detection in the incipient stage is necessary to avoid hazardous operating conditions and redu...
This thesis presents novel methods for advanced modelling and fault diagnosis of power apparatuses, ...
AbstractFailure of transformer is very complex, dissolved Gas in Oil Analysis (DGA) is presently the...
This paper considers the problem of classifying power transformer faults in the incipient stage by u...
This paper discuss the application of artificial neural network-based algorithms to identify differe...
Compared with conventional methods of fault diagnosis for power transformers, which have defects suc...
Dissolved gas analysis (DGA) is the standard technique to diagnose the fault types of oil-immersed p...
Missing values are prevalent in real-world datasets and they may reduce predictive performance of a ...
The Dissolved Gas Analysis (DGA) is utilized as a test for the detection of incipient prob-lems in t...
Missing values are prevalent in real-world datasets and they may reduce predictive performance of a ...
Power transformers represent one of the most abundant and expensive components in the electric power...
In South Africa, the growing power demand, challenges of having idle infrastructure, and power deliv...
Abstract — Power transformers are important equipments in power system. Smooth functioning is the ke...
This paper presents an intelligent fault classification approach for power transformer dissolved gas...
One of the most crucial parts of the electrical grid is the power transformer. Due to the high cost ...
Fault detection in the incipient stage is necessary to avoid hazardous operating conditions and redu...
This thesis presents novel methods for advanced modelling and fault diagnosis of power apparatuses, ...
AbstractFailure of transformer is very complex, dissolved Gas in Oil Analysis (DGA) is presently the...
This paper considers the problem of classifying power transformer faults in the incipient stage by u...
This paper discuss the application of artificial neural network-based algorithms to identify differe...
Compared with conventional methods of fault diagnosis for power transformers, which have defects suc...
Dissolved gas analysis (DGA) is the standard technique to diagnose the fault types of oil-immersed p...
Missing values are prevalent in real-world datasets and they may reduce predictive performance of a ...