Islanding Detection in Microgrid Using Deep Learning Based on 1D CNN and CNN-LSTM Networks
Künye
OZCANLI, Asiye Kaymaz, & Mustafa BAYSAL. "Islanding Detection in Microgrid Using Deep Learning Based on 1D CNN and CNN-LSTM Networks". Sustainable Energy, Grids and Networks, 32 (2022): 100839.Özet
Islanding detection is a critical task due to safety hazards and technical issues for the operation of
microgrids. Deep learning (DL) has been applied for islanding detection and achieved good results
due to the ability of automatic feature learning in recent years. Long short term memory (LSTM) and
two dimensional (2D) convolutional neural networks (CNN) based DL techniques are implemented
and demonstrated well performance on islanding detection. However, one dimensional (1D) CNN is
more suitable for real-time implementations since it has relatively low complexity and cost-effective
than 2D CNN. In this paper, for the first time, the 1D CNN and the combination of 1D CNN-LSTM
are proposed for islanding detection to better exploit the global information of islanding data samples
using the strengths of both networks. The proposed methods utilize only voltage and current harmonic
measurements as input at the point of common coupling (PCC). About 4000 cases under the modified
CERTS microgrid model are simulated to evaluate the performance of the proposed architectures. The
simulation results and the presented analysis show that the proposed networks have achieved the
maximum accuracy of 100% on the task of islanding detection; especially the proposed CNN-LSTM
model outperforms the other approaches. Furthermore, the robustness of the proposed methods is
demonstrated with unseen samples under low none detection zone and the expansion of microgrid
topology.