Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation

The development of electric power systems in the future will be more complex. Because of that, for the electric power system's operation to remain reliable, monitoring technology or algorithms is needed to support more advanced information delivery. One of the technologies used is the phasor me...

Full description

Bibliographic Details
Main Authors: Azhar, I.F., Putranto, L.M., Irnawan, R.
Format: Conference or Workshop Item
Published: 2021
Subjects:
_version_ 1797037449996664832
author Azhar, I.F.
Putranto, L.M.
Irnawan, R.
author_facet Azhar, I.F.
Putranto, L.M.
Irnawan, R.
author_sort Azhar, I.F.
collection UGM
description The development of electric power systems in the future will be more complex. Because of that, for the electric power system's operation to remain reliable, monitoring technology or algorithms is needed to support more advanced information delivery. One of the technologies used is the phasor measurement unit (PMU). The more PMUs used in the electric power system network, the more data will be generated from the PMU because the PMU has a high data sample resolution and is able to observe transient conditions. This paper discussed the transient stability prediction using CNN-LSTM for time step prediction using PMU data. The proposed method is used for predicting stable and unstable cases in time series data. The research focuses on stability conditions due to network changes, such as line detachment and out-of-step protection on generators when there is a loss of synchronism after the occurrence of three-phase fault. The proposed method is simulated using IEEE 39 bus test system in DIgSILENT PowerFactory. The resulting model can reach an accuracy of 99.62, with an average time of simulation per epoch is 247 s. The proposed method has a higher accuracy than the CNN and convLSTM methods and can overcome the weakness of the CNN method which consumes a lot of time during the training process. © 2021 IEEE.
first_indexed 2024-03-14T00:03:30Z
format Conference or Workshop Item
id oai:generic.eprints.org:280232
institution Universiti Gadjah Mada
last_indexed 2024-03-14T00:03:30Z
publishDate 2021
record_format dspace
spelling oai:generic.eprints.org:2802322023-11-07T01:08:41Z https://repository.ugm.ac.id/280232/ Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation Azhar, I.F. Putranto, L.M. Irnawan, R. Power and Energy Systems Engineering (excl. Renewable Power) Electrical and Electronic Engineering The development of electric power systems in the future will be more complex. Because of that, for the electric power system's operation to remain reliable, monitoring technology or algorithms is needed to support more advanced information delivery. One of the technologies used is the phasor measurement unit (PMU). The more PMUs used in the electric power system network, the more data will be generated from the PMU because the PMU has a high data sample resolution and is able to observe transient conditions. This paper discussed the transient stability prediction using CNN-LSTM for time step prediction using PMU data. The proposed method is used for predicting stable and unstable cases in time series data. The research focuses on stability conditions due to network changes, such as line detachment and out-of-step protection on generators when there is a loss of synchronism after the occurrence of three-phase fault. The proposed method is simulated using IEEE 39 bus test system in DIgSILENT PowerFactory. The resulting model can reach an accuracy of 99.62, with an average time of simulation per epoch is 247 s. The proposed method has a higher accuracy than the CNN and convLSTM methods and can overcome the weakness of the CNN method which consumes a lot of time during the training process. © 2021 IEEE. 2021 Conference or Workshop Item PeerReviewed Azhar, I.F. and Putranto, L.M. and Irnawan, R. (2021) Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation. In: 2021 International Conference on Technology and Policy in Energy and Electric Power (ICT-PEP). https://www.scopus.com/inward/record.uri?eid=2-s2.0-85123479458&doi=10.1109%2fICT-PEP53949.2021.9601021&partnerID=40&md5=8f349521c67817680eec91c9b4be73ed
spellingShingle Power and Energy Systems Engineering (excl. Renewable Power)
Electrical and Electronic Engineering
Azhar, I.F.
Putranto, L.M.
Irnawan, R.
Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation
title Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation
title_full Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation
title_fullStr Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation
title_full_unstemmed Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation
title_short Transient Stability Detection Using CNN-LSTM Considering Time Frame of Observation
title_sort transient stability detection using cnn lstm considering time frame of observation
topic Power and Energy Systems Engineering (excl. Renewable Power)
Electrical and Electronic Engineering
work_keys_str_mv AT azharif transientstabilitydetectionusingcnnlstmconsideringtimeframeofobservation
AT putrantolm transientstabilitydetectionusingcnnlstmconsideringtimeframeofobservation
AT irnawanr transientstabilitydetectionusingcnnlstmconsideringtimeframeofobservation