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考虑多因素动态效应的光伏功率预测:一种基于动态局部特征嵌入的广义学习系统
Photovoltaic Power Prediction Considering Multifactorial Dynamic Effects: A Dynamic Locally Featured Embedding-Based Broad Learning System
| 作者 | Ziwen Gu · Yatao Shen · Zijian Wang · Yaqun Jiang · Chun Huang · Peng Li |
| 期刊 | IEEE Transactions on Sustainable Energy |
| 出版日期 | 2025年3月 |
| 技术分类 | 光伏发电技术 |
| 技术标签 | 储能系统 |
| 相关度评分 | ★★★★★ 5.0 / 5.0 |
| 关键词 | 光伏发电功率预测 动态局部特征嵌入 广义学习系统 动态相空间重构 预测精度 |
语言:
中文摘要
精确的光伏功率预测是新型电力系统高效稳定运行的前提。现有研究多关注温度、辐照度等全局因素与光伏功率的关系,常忽略其局部动态影响,导致预测精度下降。为此,本文考虑多因素间的动态关联,提出一种基于动态局部特征嵌入的广义学习系统(DLFE-BLS)。首先设计动态相空间重构方法(DPSR)刻画多变量数据的动态特性,进而引入动态局部特征嵌入(DLFE)算法提取局部动态特征,并将其融入广义学习系统框架,构建DLFE-BLS模型以提升预测精度。实验结果表明,该模型在多种场景下均优于对比模型,尤其在迁移预测中表现最优。
English Abstract
Accurate photovoltaic power (PVP) prediction is a prerequisite for the efficient and stable operation of new power systems. While existing research has extensively explored the relationship between global factors such as temperature, irradiance, and photovoltaic power, the local dynamic impacts of these factors are often overlooked, which may reduce the accuracy of predictions. To address this issue, this paper considers the dynamic interrelationships among multiple factors and proposes a dynamic locally featured embedding-based broad learning system (DLFE-BLS) algorithm for PVP prediction. Firstly, a novel dynamic phase space reconstruction method (DPSR) is proposed to characterize the dynamic properties of multivariate data. Furthermore, a dynamic local featured embedding (DLFE) algorithm is introduced to extract local dynamic features from multivariate data. Finally, by integrating the dynamic reconstruction and dynamic feature extraction processes into the broad learning system (BLS) framework, we propose the DLFE-BLS algorithm to improve the accuracy of PVP prediction. Case studies have shown that DLFE-BLS outperforms other models in terms of prediction accuracy. Additionally, it has the highest accuracy when applied to transfer prediction.
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SunView 深度解读
该DLFE-BLS光伏功率预测技术对阳光电源iSolarCloud智能运维平台和SG系列光伏逆变器具有重要应用价值。其动态相空间重构方法可优化MPPT算法在复杂气象条件下的功率追踪精度,局部动态特征提取能力可提升PowerTitan储能系统的充放电策略优化。该模型在迁移预测场景的优异表现,可直接应用于分布式光伏电站的快速部署与预测性维护,减少现场调试成本。建议将该算法集成至iSolarCloud平台的智能诊断模块,结合ST储能变流器实现光储协同优化控制,提升新型电力系统的调度精度与经济性。