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首页> 外文期刊>Journal of Modern Power Systems and Clean Energy >Multi-objective interval prediction of wind power based on conditional copula function
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Multi-objective interval prediction of wind power based on conditional copula function

机译:基于条件关联函数的风电多目标区间预测

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摘要

Interval prediction of wind power, which features the upper and lower limits of wind power at a given confidence level, plays a significant role in accurate prediction and stability of the power grid integrated with wind power. However, the conventional methods of interval prediction are commonly based on a hypothetic probability distribution function, which neglects the correlations among various variables, leading to decreased prediction accuracy. Therefore, in this paper, we improve the multi-objective interval prediction based on the conditional copula function, through which we can fully utilize the correlations among variables to improve prediction accuracy without an assumed probability distribution function. We use the multi-objective optimization method of non-dominated sorting genetic algorithm-II (NSGA-II) to obtain the optimal solution set. The particular best solution is weighted by the prediction interval average width (PIAW) and prediction interval coverage probability (PICP) to pick the optimized solution in practical examples. Finally, we apply the proposed method to three wind power plants in different Chinese cities as examples for validation and obtain higher prediction accuracy compared with other methods, i.e., relevance vector machine (RVM), artificial neural network (ANN), and particle swarm optimization kernel extreme learning machine (PSO-KELM). These results demonstrate the superiority and practicability of this method in interval prediction of wind power.
机译:在给定的置信度下,风电的间隔预测具有风电的上限和下限,在与风电集成的电网的准确预测和稳定性中起着重要作用。然而,间隔预测的常规方法通常基于假设概率分布函数,该函数忽略了各个变量之间的相关性,从而导致预测精度下降。因此,在本文中,我们改进了基于条件copula函数的多目标区间预测,从而可以在不假设概率分布函数的情况下充分利用变量之间的相关性来提高预测精度。我们使用非支配排序遗传算法-II(NSGA-II)的多目标优化方法来获得最优解集。通过预测间隔平均宽度(PIAW)和预测间隔覆盖概率(PICP)对特定的最佳解决方案进行加权,以在实际示例中选择优化的解决方案。最后,我们将该方法应用于中国不同城市的三座风力发电厂进行验证,与相关向量机(RVM),人工神经网络(ANN)和粒子群优化等方法相比,获得了更高的预测精度。内核极限学习机(PSO-KELM)。这些结果证明了该方法在风电区间预测中的优越性和实用性。

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