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A novel method based on lower-upper bound approximation to predict the wind energy

机译:一种基于下上限近似的新方法,以预测风能

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Recently, the prediction of wind power generation has served as a prerequisite problem for determining the objective of the reliability and lowecost power system performance. The difference between conventional deterministic prediction and probabilistic prediction is that the first types ignore the uncertainty of the wind speeds. In this paper, a novel probabilistic prediction method as improved lower eupper bound approximation is applied for building the reliable prediction intervals, which is based on the system that uses the mathematical models of the environment to prognosticate the weather based on existing meteorology (Numeral Weather Prediction System). To verify the worth of the proposed method, forecasting modes in this study are divided as hourly and daily predictions, which are applied to seven wind farms of Taiwan. In addition, adapting parameters in improved lowereupper bound approximation method is performed by resorting to the charged search system algorithm. Also, to increase the prediction speed, the probability density function of wind speed is used, and to decrease the estimation model volume, the kernel density estimation model is applied into the proposed method. The simulation results in comparison with other methods indicate that the prediction intervals produced by the proposed method outperformed and its indices are better. The average error between prediction and real data in the proposed method obtained as about 11%, while other methods error is more than 15%. In addition, three prediction interval indices are used in order to evaluate the different studied manners as: prediction interval overlay probability, normalized average of prediction interval length, and overlay width scale. As the results shown, the best performance is related to the proposed method. (C) 2020 Elsevier Ltd. All rights reserved.
机译:最近,风力发电的预测已经成为确定可靠性和低电平电力系统性能的前提问题。传统确定性预测和概率预测之间的差异是第一类型忽略风速的不确定性。本文施加了一种新颖的概率预测方法,作为改进的下部充电近似逼近,用于构建可靠的预测间隔,这是基于使用环境的数学模型来基于现有气象学预测天气的系统(数字天气预报系统)。为了验证所提出的方法的价值,本研究中的预测模式分为每小时和日常预测,适用于台湾的七个风电场。此外,通过借助收费的搜索系统算法来执行改进的PEREREUPPER拟合近似方法的调整参数。而且,为了提高预测速度,使用风速的概率密度函数,并降低估计模型体积,核密度估计模型应用于所提出的方法。与其他方法相比,仿真结果表明,所提出的方法产生的预测间隔优于优势,其指数更好。所提出的方法中的预测和实际数据之间的平均误差为约11%,而其他方法误差超过15%。另外,使用三个预测间隔指数来评估不同的学习的方式作为:预测间隔覆盖概率,预测间隔长度的归一化平均值和覆盖宽度尺度。随着结果所示,最佳性能与所提出的方法有关。 (c)2020 elestvier有限公司保留所有权利。

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