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http://dspace.azjhpc.org/xmlui/handle/123456789/90
Title: | SHORT-TERM WIND SPEED FORECASTING USING DEEP VARIATIONAL LSTM |
Authors: | Atashfaraz, Navid Manthouri, Mohammad |
Keywords: | LSTM;VAE;MLP;Wind Speed Prediction;Dimension Reduction;Encoder-Decoder |
Issue Date: | Dec-2022 |
Publisher: | Azerbaijan Journal of High Performance Computing |
Abstract: | Wind speed and power at wind power stations affect the efficiency of a wind farm, so accurate wind forecasting, a nonlinear signal with high fluctuations, increases security and better efficiency than wind power. We are looking for wind speed for a wind farm in Iran. In this research, a combined neural network created from variational autoencoder (VAE), long-term, short-term memory (LSTM), and multilayer perceptron (MLP) for dimension Reduction and encoding is proposed for predicting short-term wind speeds. The data used in this research is related to the statistics of 10 minutes of wind speed in 10- meter, 30-meter, and 40-meter wind turbines, the standard deviation of wind speed, air temperature, and humidity. To compare the proposed model (V- LSTM-MLP), we implemented three deep neural network models, including Stacked Auto-Encoder (SAE), recurrent neural networks (Regular LSTM), and hybrid model Encoder-Decoder recurrent network (LSTM-Encoder-MLP) presented on this dataset. According to the RMSE statistical index, the proposed model is worth 0.1127 for a short time and performs better than other types on this dataset. |
URI: | http://localhost:8080/xmlui/handle/123456789/90 |
ISSN: | 2616-6127 2617-4383 |
DOI: | https://doi.org/10.32010/26166127.2022.5.2.254.272 |
Journal Title: | Azerbaijan Journal of High Performance Computing |
Volume: | 5 |
Issue: | 2 |
First page number: | 254 |
Last page number: | 272 |
Number of pages: | 19 |
Appears in Collections: | Azerbaijan Journal of High Performance Computing |
Files in This Item:
File | Description | Size | Format | |
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doi.org.10.32010.26166127.2022.5.2.254.272.pdf | 2.22 MB | Adobe PDF | View/Open |
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