Distribution networks remain the most maintenance-intensive parts of power systems. The implementation of maintenance automation and prediction of equipment fault can enhance system reliability while reducing the overall costs. In Tanzania, however, maintenance automation has not been deployed in secondary distribution networks (SDNs). Instead, traditional methods are used for condition prediction and fault identification of power assets (transformers and power lines). These (manual) methods are costly and time-consuming, and may introduce human-related errors. Motivated by these challenges, this work introduces maintenance automation into the network architecture by implementing effective maintenance and fault identification methods. The p...
Condition-based Maintenance (CBM) is a maintenance policy that take maintenance action just when nee...
Abstract: A power transformer is amongst the more expensive and critical equipment installed in the ...
This study aims to study the different kinds of Machine Learning (ML) models and their working princ...
The electricity supply system includes a large-scale power generation installation and a convoluted ...
Electricity is becoming increasingly important in modern civilization, and as a result, the emphasis...
Electrical faults in the distribution network can lead to interruptions in the power supply of the c...
The occurrence of faults in any operational power system network is inevitable, and many of the caus...
The electrical power system comprises of several complex interrelated and dynamic elements, that are...
Electric power distribution networks are exposed to the environment due to their length, for this re...
Fault analysis based on high-resolution data acquisition is growing in use as it offers a more compl...
The medium term goal of the research reported in this paper was the development of a major in-house ...
Distribution Transformers (DTs) are critical components of the power distribution network, and thei...
Faults incurred by Base Transceiver Stations pose challenges to telecommunication organisations. Mos...
Reliable energy is ensured by the power quality, safety and security. For reliability and economic g...
Project (M.S., Electrical and Electronic Engineering)--California State University, Sacramento, 2014...
Condition-based Maintenance (CBM) is a maintenance policy that take maintenance action just when nee...
Abstract: A power transformer is amongst the more expensive and critical equipment installed in the ...
This study aims to study the different kinds of Machine Learning (ML) models and their working princ...
The electricity supply system includes a large-scale power generation installation and a convoluted ...
Electricity is becoming increasingly important in modern civilization, and as a result, the emphasis...
Electrical faults in the distribution network can lead to interruptions in the power supply of the c...
The occurrence of faults in any operational power system network is inevitable, and many of the caus...
The electrical power system comprises of several complex interrelated and dynamic elements, that are...
Electric power distribution networks are exposed to the environment due to their length, for this re...
Fault analysis based on high-resolution data acquisition is growing in use as it offers a more compl...
The medium term goal of the research reported in this paper was the development of a major in-house ...
Distribution Transformers (DTs) are critical components of the power distribution network, and thei...
Faults incurred by Base Transceiver Stations pose challenges to telecommunication organisations. Mos...
Reliable energy is ensured by the power quality, safety and security. For reliability and economic g...
Project (M.S., Electrical and Electronic Engineering)--California State University, Sacramento, 2014...
Condition-based Maintenance (CBM) is a maintenance policy that take maintenance action just when nee...
Abstract: A power transformer is amongst the more expensive and critical equipment installed in the ...
This study aims to study the different kinds of Machine Learning (ML) models and their working princ...