We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Recognition method of voltage sag causes based on two-dimensional transform and deep learning hybrid model.
- Authors
Zhicong Zheng; Linhai Qi; Hong Wang; Aiqiang Pan; Jian Zhou
- Abstract
The voltage sags' caused recognition is the basis for formulating governance plans and clarifying liabilities for accidents. The diversification of smart grid equipment, the grid-connected power generation of new energy sources and the regional differentiation of power consumption modes pose new challenges to the traditional methods. In this study, a method based on deep learning hybrid model is proposed. The convolutional neural network is used to flexibly receive the voltage after two-dimensional transformation, so as to automatically obtain the time series and spatial characteristics of the voltage sag signals. The deep belief network is used to replace the fully connected layers in convolutional neural network, thereby enhancing the multi-label classification ability of the model. The parameters obtained by the unsupervised training of the stacked sparse denoising auto-encoder are used to initialise the weight of deep belief network, thereby improving the convergence speed and the anti-noise performance of the model. Iterative training and repeated testing of the network using pre-processed simulation data and actual recorded data verify the high recognition accuracy and strong anti-noise performance of the hybrid model. Compared with the traditional methods, the hybrid model also has good generalisation ability and can be effectively applied in practical engineering.
- Subjects
DEEP learning; BLENDED learning; ARTIFICIAL neural networks; ELECTRIC potential; CONVOLUTIONAL neural networks; TIME series analysis
- Publication
IET Power Electronics (Wiley-Blackwell), 2020, Vol 13, Issue 1, p168
- ISSN
1755-4535
- Publication type
Article
- DOI
10.1049/iet-pel.2019.0593