Analisis Peningkatan Kualitas DVR Menggunakan Metode PSO dan ANN terhadap Kedip Tegangan (Studi Kasus: PT. PLN (Persero) UP3 Sibolga Penyulang SB02)
View/ Open
Date
2023Author
Muhammad, Maulaya
Advisor(s)
Siregar, Yulianta
Metadata
Show full item recordAbstract
Power Quality is one of the problems in power systems, caused by increased nonlinear
loads and short circuit faults. Short circuits often occur in power systems and generally
cause voltage sags that can damage sensitive loads. Dynamic Voltage Restorer (DVR) is
an efficient and flexible solution in overcoming voltage sag problems. The control system
on the DVR plays an important role in improving the quality of voltage injection applied
to the network. DVR control systems based on Particle Swarm Optimization (PSO) and
Artificial Neural Network (ANN) were proposed in this study to assess better controllers
applied to DVRs. In this study, a simulation of voltage sag due to 3-phase short-circuit fault
was carried out based on a load of 70% of the total load and a fault location point of 75%
of the feeder's length. The simulation was carried out on the SB 02 Sibolga feeder.
Modeling and simulation results are carried out with Matlab – Simulink. The simulation
results show that voltage sag is successfully recovered by DVR-PSO and DVR-ANN by
supplying voltage at each phase. Based on the results of the analysis, it shows that DVR ANN is better than DVR-PSO in injecting voltage into the network.
Collections
- Undergraduate Theses [1465]