Fault Detection and Classification using Deep Learning Method and
Neuro-Fuzzy Algorithm in a Smart Distribution Grid
Abstract
Fault detection is crucial in smart grid control and monitoring
operations. The use of smart meters leads to appearance of a large
amount of digital data whose conventional and chronological techniques
are not efficient enough for processing and decision-making. In this
paper, a novel data analysis model based on deep learning and
neuro-fuzzy algorithm is proposed for detection and classification of
faults in a smart grid. First, the Long Short Term Memory (LSTM) based
deep learning model is applied for training the data samples extracted
from the smart meters. Then, the Adaptive Neuro Fuzzy Inference System
(ANFIS) is implemented for fault detection and classification from the
trained data. With this intelligent method proposed, single-phase,
two-phase and three-phase faults can be identified using a restricted
amount of data. To verify the effectiveness of our methodology, an
intelligent model of the IEEE 13-node network is used. The results
indicate that the combined ANFIS-LSTM deep learning model outperforms
existing machine learning methods in the literature in terms of accuracy
for fault detection and classification.