Fault Location Estimator Design
for Power Distribution System Using Artificial Neural Networks
LAP Lambert Academic Publishing
€54.90
(inklusive MwSt.)
Verfügbarkeit: Titel wird für Sie produziert, Festbezug, bitte vormerken
Zusatztext
Fault location in distribution system is critical issue to increase the availability of power supply by reducing the time of interruption for maintenance in electric utility companies. In this thesis fault location estimator for power distribution system using artificial neural network is developed for line to ground, line to line, line to line to ground and three phase to ground faults in distribution system. To develop this estimator one of rural radial power distribution feeder in Ethiopia, Oromia, Assela substation Gumguma line feeder is used as a test feeder. This feeder is simulated using ETAP software to generate data for different fault condition, with different fault resistance and loading conditions, which is the fault phase voltage and current. It is found that artificial neural networks are one of the alternate options in fault estimator design for distribution system where sufficient distribution network data are available with narrow fault location distance range from the substation. This has benefits in assisting for maintenance plan, saving efforts in fault location finding and economical benefits by reducing interruption time.
Autorenportrait
Samuel Shawel Tessema holds a BSc. Degree in Electrical Engineering from Jimma University Iinstitute of Technology and a MSc. in Electrical Power Engineering from Addis Ababa Institute of Technology. Currently he is working as Head in Off-Grid System Planner in the Electric utility.
Weitere Details
Erschienen: 21.03.2019
Umfang: 104 S.
Sprache: ENG
Einband: KT
Format: 0.7 x 22 x 15 cm
ISBN/EAN: 9786202093040
Umbreit-Nr.: 7020232
