AbstractThis paper presents an accurate algorithm for locating faults in a medium voltage underground power cable using a combination of Adaptive Network-Based Fuzzy Inference System (ANFIS) and discrete wavelet transform (DWT). The proposed method uses five ANFIS networks and consists of 2 stages, including fault type classification and exact fault location. In the first part, an ANFIS is used to determine the fault type, applying four inputs, i.e., the maximum detailed energy of three phase and zero sequence currents. Other four ANFIS networks are utilized to pinpoint the faults (one for each fault type). Four inputs, i.e., the maximum detailed energy of three phase and zero sequence currents, are used to train the neuro-fuzzy inference s...
This thesis presents a novel approach to automating Time Domain Reflectrometry (TDR) waveform acquis...
This paper proposes a fault location method employing wavelet fuzzy neural network to use post-fault...
Underground cables are being faced with a wide variety of faults due to underground conditions, wea...
This paper presents a fault identification, classification and fault location estimation method base...
This paper presents an accurate algorithm for locating faults in a medium voltage underground power ...
AbstractThis paper presents an accurate algorithm for locating faults in a medium voltage undergroun...
This paper presents a fault identification, classification and fault location estimation method base...
Transmissionlinesare thebackboneof electricalpower systems and other power utilities as they are use...
In the past decade, electricity demand has increased rapidly in metropolitan areas. All over the wor...
A novel method to locate the zone of transient faults and to classify the fault type in Power Distri...
A quick, reliable, and accurate fault location approach is essential in underground power systems pr...
This paper presents an improved approach for locating and identifying faults for UHV overhead Transm...
In this research, we create a single-phase to ground synthetic fault by the simulation of a three-ph...
This paper describes a method of Adaptive Neuro Fuzzy Inference System (ANFIS) for identifying and l...
This thesis presents a novel approach to automating Time Domain Reflectrometry (TDR) waveform acquis...
This paper proposes a fault location method employing wavelet fuzzy neural network to use post-fault...
Underground cables are being faced with a wide variety of faults due to underground conditions, wea...
This paper presents a fault identification, classification and fault location estimation method base...
This paper presents an accurate algorithm for locating faults in a medium voltage underground power ...
AbstractThis paper presents an accurate algorithm for locating faults in a medium voltage undergroun...
This paper presents a fault identification, classification and fault location estimation method base...
Transmissionlinesare thebackboneof electricalpower systems and other power utilities as they are use...
In the past decade, electricity demand has increased rapidly in metropolitan areas. All over the wor...
A novel method to locate the zone of transient faults and to classify the fault type in Power Distri...
A quick, reliable, and accurate fault location approach is essential in underground power systems pr...
This paper presents an improved approach for locating and identifying faults for UHV overhead Transm...
In this research, we create a single-phase to ground synthetic fault by the simulation of a three-ph...
This paper describes a method of Adaptive Neuro Fuzzy Inference System (ANFIS) for identifying and l...
This thesis presents a novel approach to automating Time Domain Reflectrometry (TDR) waveform acquis...
This paper proposes a fault location method employing wavelet fuzzy neural network to use post-fault...
Underground cables are being faced with a wide variety of faults due to underground conditions, wea...