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Robust short-term prediction of wind power generation under uncertainty via statistical interpretation of multiple forecasting models

机译:通过多个预测模型的统计解释,在不确定性下的风力发电的强大短期预测

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摘要

The predictions of the autoregressive moving average model, the artificial neural network model, and the grey prediction model are comparatively studied for the wind power generation. Each predictive model is the most suitable for a certain variance of wind at a given period. In this study, the weighting method is proposed to systematically combine the predicted values of those three predictive models over time, based on their forecasting performance by the root mean square errors (RMSEs) between the actual values and the predicted values. The multiple forecasting models are applied to predict the wind power generation of a wind farm with 1 h, 3 h and 6 h ahead. The RMSEs of the multiple forecasting models are significantly the lowest values among those three predictive models and the benchmark of the persistence model. Also, the prediction interval around the predicted value is statistically determined to indicate the feasible range of the wind power generation with a prescribed percentage of confidence under uncertainty causing the historic prediction errors. (C) 2019 Elsevier Ltd. All rights reserved.
机译:对风力发电的相对研究了自回归移动平均模型,人工神经网络模型和灰色预测模型的预测。每个预测模型最适合于给定时期的风的某种方差。在本研究中,提出了加权方法以系统地将这三个预测模型的预测值随时间的预测性能,基于实际值与预测值之间的根均线误差(RMSE)。应用多个预测模型以预测1小时,3小时和6小时的风电场的风力发电。多个预测模型的RMSE在这三种预测模型和持久性模型的基准中显着最低的值。而且,统计上确定预测值周围的预测间隔,以指示风力发电的可行范围,以在不确定度下的规定百分比引起历史预测误差。 (c)2019 Elsevier Ltd.保留所有权利。

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