Faulty Line-Section Identification Method for Distribution Systems Based on Fault Indicators

This article proposes a fault identification method that is embedded in an asset management system (AMS) to identify the faulted location based on the fault flags reported from the fault indicators (FIs). The fault identification model based on the Petri-net technology is developed using the distrib...

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Veröffentlicht in:IEEE transactions on industry applications 2021-03, Vol.57 (2), p.1335-1343
Hauptverfasser: Ku, Te-Tien, Li, Chung-Sheng, Lin, Chia-Hung, Chen, Chao-Shun, Hsu, Cheng-Ting
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Sprache:eng
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Zusammenfassung:This article proposes a fault identification method that is embedded in an asset management system (AMS) to identify the faulted location based on the fault flags reported from the fault indicators (FIs). The fault identification model based on the Petri-net technology is developed using the distribution network topology generated by a geographic information system. The proposed method uses the data set of fault flags generated by FIs, the statuses of circuit breakers, the available precurrent and postcurrent measurements of FIs, and the loadings of distribution feeders and laterals. The hybrid communication system is applied to provide two-way communication between the control center and FIs. The AMS with the embedded fault identification method can dispatch the repair crews to the fault location faster to accelerate the customer service restoration. A distribution feeder of Taiwan Power Company was selected for the computer simulation to demonstrate the effectiveness of the proposed method by using the communication-capable FIs to identify the exact fault location of distribution lines after a short circuit fault occurs in a distribution system.
ISSN:0093-9994
1939-9367
DOI:10.1109/TIA.2020.3045672