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A new strategy to quantify uncertainties of wavelet-GRNN-PSO based solar PV power forecasts using bootstrap confidence intervals

机译:利用自举置信区间量化基于小波-GRNN-PSO的太阳能光伏发电预测的不确定性的新策略

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Quantification of uncertainties associated with solar photovoltaic (PV) power generation forecasts is essential for optimal management of solar PV farms and their successful integration into the grid. These uncertainties can be appropriately quantified and represented in the form of probabilistic rather than deterministic. This paper introduces bootstrap confidence intervals (CIs) to quantify uncertainty estimation of PV power forecasts obtained from the proposed deterministic hybrid intelligent model that uses an integrated framework of wavelet transform (WT) and a generalized regression neural network (GRNN), which is optimized by population-based stochastic particle swarm optimization (PSO) algorithm. This particular combination of deterministic hybrid intelligent model and bootstrap method for uncertainty estimation has not been applied in the area of solar PV forecasting. Test results demonstrate the high degree of efficiency of the proposed methods over the tested alternatives in multiple seasons including sunny days (SDs), cloudy days (CDs), and rainy days (RDs).
机译:量化与太阳能光伏(PV)发电量预测相关的不确定性对于太阳能光伏农场的最佳管理及其成功并入电网至关重要。这些不确定性可以适当地量化,并以概率而非确定性的形式表示。本文介绍了自举置信区间(CIs)以量化从拟议的确定性混合智能模型获得的光伏发电预测的不确定性估计,该模型使用小波变换(WT)和广义回归神经网络(GRNN)的集成框架,并通过优化基于种群的随机粒子群优化(PSO)算法。确定性混合智能模型和用于不确定性估计的Bootstrap方法的这种特殊组合尚未在太阳能光伏预测领域中应用。测试结果表明,在包括晴天(SDs),阴天(CDs)和阴雨天(RDs)在内的多个季节中,所提出的方法在经过测试的替代方法上具有很高的效率。

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