The Academic Perspective Procedia publishes Academic Platform symposiums papers as three volumes in a year. DOI number is given to all of our papers.
Publisher : Academic Perspective
Journal DOI : 10.33793/acperpro
Journal eISSN : 2667-5862
Year :2019, Volume 2, Issue 3, Pages: 1115-1121
22.11.2019
Real-Time Disturbance Detection Using STFT Method in Microgrids
Power quality disturbances are the main concerns to be eliminated in microgrids and decrease the power quality and reliability of the grid. Numerous methods based on signal processing have been proposed in the literature for the detection of power quality disturbances. In this study, the proposed STFT-based method is applied to the voltage signal in real-time at the point of PCC in microgrids. By using the proposed method, it is tried to detection the sudden frequency changes and the over/under voltage events in case of fault conditions. As a result, the proposed method can detect faults in microgrids a very short time and with high accuracy within the limit values specified in international standards.
Keywords:
Fault Detection, Short Time Fourier Transform, Microgrids, Real-time
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Cite
@article{acperproISITES2019ID124, author={Yılmaz, Alper and Bayrak, Gökay}, title={Real-Time Disturbance Detection Using STFT Method in Microgrids}, journal={Academic Perspective Procedia}, eissn={2667-5862}, volume={2}, year=2019, pages={1115-1121}}
Yılmaz, A. , Bayrak, G.. (2019). Real-Time Disturbance Detection Using STFT Method in Microgrids. Academic Perspective Procedia, 2 (3), 1115-1121. DOI: 10.33793/acperpro.02.03.124
%0 Academic Perspective Procedia (ACPERPRO) Real-Time Disturbance Detection Using STFT Method in Microgrids% A Alper Yılmaz , Gökay Bayrak% T Real-Time Disturbance Detection Using STFT Method in Microgrids% D 11/22/2019% J Academic Perspective Procedia (ACPERPRO)% P 1115-1121% V 2% N 3% R doi: 10.33793/acperpro.02.03.124% U 10.33793/acperpro.02.03.124