Deep learning for power system time series forecasting
Power system time series forecasting is an essential part of smart electric grid. It enhances the reliability and reliability and efficiency of the power system. However, the traditional forecasting methods are unable to satisfy the much higher demand of precision in forecasting. In this dissert...
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sg-ntu-dr.10356-760462023-07-04T16:08:22Z Deep learning for power system time series forecasting Sun, Weijia Ponnuthurai N. Suganthan School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering Power system time series forecasting is an essential part of smart electric grid. It enhances the reliability and reliability and efficiency of the power system. However, the traditional forecasting methods are unable to satisfy the much higher demand of precision in forecasting. In this dissertation, two kinds of power system datasets are tried, which are electricity load and wind power. Long Short Term Memory (LSTM) network is e↵ective for these sequential data based tasks and some signal preprocessing methods could improve prediction performance. Since wind power generation rely on wind speed, which is stochastic and intermittent, it is more difficult to forecast in short term compared with electricity load forecasting. After implementing di↵erent forecasting methods, a novel approach, which combines LSTM network and Empirical Mode Decomposition (EMD), is proposed. Original data is decomposed into constitutive series through EMD. The decomposition is expressed as a function of a combination of several components. LSTM networks are used to fit the components with di↵erent complexity for prediction. In the proposed model, the network is simplified and computational efficiency is improved. Keywords—Long Short Term Memory, Empirical Mode Decomposition, Wavelet Transform, Short-Term Load Forecasting, Wind Power Forecasting Master of Science (Computer Control and Automation) 2018-09-24T12:14:05Z 2018-09-24T12:14:05Z 2018 Thesis http://hdl.handle.net/10356/76046 en 61 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering Sun, Weijia Deep learning for power system time series forecasting |
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Power system time series forecasting is an essential part of smart electric grid. It
enhances the reliability and reliability and efficiency of the power system. However,
the traditional forecasting methods are unable to satisfy the much higher
demand of precision in forecasting.
In this dissertation, two kinds of power system datasets are tried, which are
electricity load and wind power. Long Short Term Memory (LSTM) network
is e↵ective for these sequential data based tasks and some signal preprocessing
methods could improve prediction performance. Since wind power generation
rely on wind speed, which is stochastic and intermittent, it is more difficult to
forecast in short term compared with electricity load forecasting.
After implementing di↵erent forecasting methods, a novel approach, which combines
LSTM network and Empirical Mode Decomposition (EMD), is proposed.
Original data is decomposed into constitutive series through EMD. The decomposition
is expressed as a function of a combination of several components. LSTM
networks are used to fit the components with di↵erent complexity for prediction.
In the proposed model, the network is simplified and computational efficiency is
improved.
Keywords—Long Short Term Memory, Empirical Mode Decomposition,
Wavelet Transform, Short-Term Load Forecasting, Wind Power
Forecasting |
author2 |
Ponnuthurai N. Suganthan |
author_facet |
Ponnuthurai N. Suganthan Sun, Weijia |
format |
Theses and Dissertations |
author |
Sun, Weijia |
author_sort |
Sun, Weijia |
title |
Deep learning for power system time series forecasting |
title_short |
Deep learning for power system time series forecasting |
title_full |
Deep learning for power system time series forecasting |
title_fullStr |
Deep learning for power system time series forecasting |
title_full_unstemmed |
Deep learning for power system time series forecasting |
title_sort |
deep learning for power system time series forecasting |
publishDate |
2018 |
url |
http://hdl.handle.net/10356/76046 |
_version_ |
1772827782598885376 |