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Application of sliding window technique for prediction of wind velocity time series

机译:滑动窗口技术在风速时间序列预测中的应用

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The uncertainty caused by the discontinuous nature of wind energy affects the power grid. Hence, forecasting the behavior of this renewable resource is important for energy managers and electricity traders to overcome the risk of unpredictability and to provide reliability for the grid. The objective of this paper is to employ and compare the potential of various artificial neural network structures of multi-layer perceptron (MLP) and radial basis function for prediction of the wind velocity time series in Tehran, Iran. Structure analysis and performance evaluations of the established networks indicate that the MLP network with a 4-7-13-1 architecture is superior to others. The best networks were deployed to unseen data and were capable of predicting the velocity time series via using the sliding window technique successfully. Applying the statistical indices with the predicted and the actual test data resulted in acceptable RMSE, MSE and R _(2)values with 1.19, 1.43 and 0.85, respectively, for the best network.
机译:由风能的不连续性引起的不确定性影响电网。因此,预测这种可再生资源的行为对于能源管理者和电力交易商克服不可预测的风险并为电网提供可靠性至关重要。本文的目的是利用和比较多层感知器(MLP)和径向基函数的各种人工神经网络结构的潜力,以预测伊朗德黑兰的风速时间序列。对已建立网络的结构分析和性能评估表明,具有4-7-13-1体系结构的MLP网络要优于其他网络。最好的网络被部署到看不见的数据上,并且能够通过成功使用滑动窗口技术来预测速度时间序列。对于最佳网络,将统计指标与预测和实际测试数据一起应用,得出可接受的RMSE,MSE和R _(2)值分别为1.19、1.43和0.85。

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