Solar Irradiance Prediction Interval Estimation and Deterministic Forecasting Model Using Ground-based Sky Image

Xinyang Zhang, Z. Zhen, Yiqian Sun, Fei Wang, Yagang Zhang, Hui Ren, Hui Ma, Wei Zhang
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引用次数: 6

Abstract

Due to the explosive penetration of photovoltaic (PV) systems in the power grid, accurate and well-informed solar PV power forecasting has become extraordinarily crucial, while accurate irradiance prediction is the basis of PV power forecasting. Yet most research on PV power/irradiance forecasting focus on deterministic forecasting, whereas it is difficult to express the credibility of the forecasting results, especially in the scene of instantaneous fluctuation of irradiance and photovoltaic power caused by cloud movement. Therefore, in this paper, we use the ground-based sky image to accurately estimate and track the rapid fluctuation of solar irradiance and meanwhile considers the uncertain constrained optimization problem to establish a high-quality joint point-interval real-time estimation model, which can not only provide the result points from deterministic forecasting, but also achieve the prediction intervals. The results show that the model can produce tight intervals while simultaneously achieving deterministic forecasting results of high quality and strong robustness, regardless of the weather conditions. Besides, compared with the traditional way of taking the middle position of the interval as the deterministic forecasting result, the performance of our model is greatly enhanced.
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基于地基天空图像的太阳辐照度预测区间估算与确定性预测模型
由于光伏发电系统在电网中的爆炸式渗透,准确、全面的太阳能光伏发电功率预测变得尤为重要,而准确的辐照度预测是光伏发电功率预测的基础。然而,光伏发电功率/辐照度预测的研究大多集中在确定性预测上,难以表达预测结果的可信度,特别是在云运动引起辐照度和光伏发电功率瞬时波动的场景下。因此,本文利用地面天空图像对太阳辐照度的快速波动进行精确估计和跟踪,同时考虑不确定约束优化问题,建立高质量的联合点间隔实时估计模型,既能提供确定性预测的结果点,又能实现预测区间。结果表明,无论在何种天气条件下,该模型都能在获得高质量和强鲁棒性的确定性预报结果的同时产生紧密的区间。此外,与传统的以区间中间位置作为确定性预测结果的方法相比,我们的模型的性能得到了很大的提高。
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