An Evolutionary Deep Learning Method for Short-term Wind Speed
Prediction: A Case Study of the Lillgrund Offshore Wind Farm
- URL: http://arxiv.org/abs/2002.09106v1
- Date: Fri, 21 Feb 2020 03:28:17 GMT
- Title: An Evolutionary Deep Learning Method for Short-term Wind Speed
Prediction: A Case Study of the Lillgrund Offshore Wind Farm
- Authors: Mehdi Neshat, Meysam Majidi Nezhad, Ehsan Abbasnejad, Lina Bertling
Tjernberg, Davide Astiaso Garcia, Bradley Alexander, Markus Wagner
- Abstract summary: This study uses a new hybrid evolutionary approach that uses a popular evolutionary search algorithm, CMA-ES, to tune the hyper- parameters of two Long short-term memory(LSTM) ANN models for wind prediction.
The proposed hybrid approach is trained on data gathered from an offshore wind turbine installed in a Swedish wind farm located in the Baltic Sea.
- Score: 6.939496425463776
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurate short-term wind speed forecasting is essential for large-scale
integration of wind power generation. However, the seasonal and stochastic
characteristics of wind speed make forecasting a challenging task. This study
uses a new hybrid evolutionary approach that uses a popular evolutionary search
algorithm, CMA-ES, to tune the hyper-parameters of two Long short-term
memory(LSTM) ANN models for wind prediction. The proposed hybrid approach is
trained on data gathered from an offshore wind turbine installed in a Swedish
wind farm located in the Baltic Sea. Two forecasting horizons including
ten-minutes ahead (absolute short term) and one-hour ahead (short term) are
considered in our experiments. Our experimental results indicate that the new
approach is superior to five other applied machine learning models, i.e.,
polynomial neural network (PNN), feed-forward neural network (FNN), nonlinear
autoregressive neural network (NAR) and adaptive neuro-fuzzy inference system
(ANFIS), as measured by five performance criteria.
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