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风电变流技术 储能系统 ★ 5.0

基于增强多分位数损失的扩张因果卷积风速确定性预测与预测区间

Deterministic Forecasts and Prediction Intervals for Wind Speed Using Enhanced Multi-Quantile Loss Based Dilated Causal Convolutions

作者 Adnan Saeed · Chaoshun Li · Qiannan Zhu · Belal Ahmad
期刊 IEEE Transactions on Sustainable Energy
出版日期 2025年2月
技术分类 风电变流技术
技术标签 储能系统
相关度评分 ★★★★★ 5.0 / 5.0
关键词 风速预测 多分位数回归 多尺度卷积架构 粒子群优化 预测性能
语言:

中文摘要

随着风电渗透率的提高,获取包含不确定性的风速预测对电力系统的规划与调度至关重要。本文提出一种改进的多分位数回归损失函数,可同时生成确定性预测及相应的预测区间。为提升模型效率,设计了一种基于多尺度扩张因果卷积的网络架构,并采用粒子群优化融合多尺度预测以获得最优结果。模型在NREL模拟数据及中国国家电网三个地点的实际运行数据上进行训练与验证,实验表明所提方法在模拟与真实场景下均具有优异的预测性能。

English Abstract

With rising wind power penetration into power systems obtaining wind speed forecasts with associated uncertainty becomes crucial for better planning and dispatch. This study proposes an enhanced multi quantile regression-based loss function specially tailored to train models to generate both deterministic forecast and the corresponding prediction intervals. Though the regression architecture of the model plays an important role in extracting precise forecasts, however, its efficiency is often ignored which may be a downside for short term forecasting scenarios where model training time may also be a significant factor. The present study therefore designed a multi-scale dilated convolution-based architecture for enhanced efficiency. The architecture generates predictions at different scales which are combined using particle swarm optimization to obtain optimal forecasts. The model is trained using the proposed loss function on datasets from both NREL simulations and operational Chinese state grid measurements across three different locations. The proposed model exhibits excellent forecasting performance in comparative experiments with both simulated and real-world operational datasets.
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SunView 深度解读

该风速预测技术对阳光电源储能和风电产品线具有重要应用价值。基于扩张因果卷积的预测方法可集成到ST系列储能变流器和PowerTitan系统的能量管理算法中,提升风储联合运行效率。其多分位数预测区间可优化储能调度策略,为风电波动性补偿提供更精确的容量预留。该方法也可应用于iSolarCloud平台,通过风速预测提升风电场发电计划准确性,并为预测性维护提供数据支撑。建议将此技术与阳光电源现有的GFM/GFL控制策略结合,进一步提升风储协同控制性能。