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基于Transformer扩散模型的时空概率风速预测
Spatio-Temporal Probabilistic Forecasting of Wind Speed Using Transformer-Based Diffusion Models
| 作者 | Hao Liu · Junqi Liu · Tianyu Hu · Huimin Ma |
| 期刊 | IEEE Transactions on Sustainable Energy |
| 出版日期 | 2025年7月 |
| 卷/期 | 第 17 卷 第 1 期 |
| 技术分类 | 智能化与AI应用 |
| 技术标签 | 深度学习 机器学习 风光储 调峰调频 |
| 相关度评分 | ★★★★ 4.0 / 5.0 |
| 关键词 |
语言:
中文摘要
本文提出PSTDT模型,融合去噪扩散概率模型与Transformer架构,通过双空间注意力、双阶段时间模块和时序自适应层归一化,提升风速时空概率预测精度,在多数据集上CRPS降低8%–20%,MAE降低7%–19%。
English Abstract
Spatio-temporal wind speed forecasting plays a crucial role in enhancing energy conversion efficiency and optimizing resource allocation, forming a cornerstone of sustainable development. However, existing methods for spatio-temporal wind speed forecasting face challenges in capturing intricate spatio-temporal dependencies and adapting to dynamic variations in wind speed data. To address these limitations, we propose the Probabilistic Spatio-Temporal Diffusion Transformer (PSTDT), a novel model that combines the generative power of denoising diffusion probabilistic models with the robust spatio-temporal modeling capabilities of Transformers. This approach introduces a dual-spatial attention module to model static positional relationships and dynamic dependencies from historical data, thereby capturing evolving spatial correlations. Additionally, PSTDT integrates a dual-phase temporal module for modeling cross-period temporal dependencies alongside auto-regressive temporal features, enhancing its capacity to address the complexities of time-series forecasting. Furthermore, a temporal-adaptive layer normalization is incorporated to dynamically adjust normalization parameters, improving the model’s forecast accuracy and stability. Extensive experiments demonstrate that PSTDT outperforms state-of-the-art methods across multiple datasets, reducing continuous ranked probability score by 8% –20% and mean absolute error by 7% –19% .
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SunView 深度解读
该研究提升风电功率短期概率预测精度,直接支撑阳光电源风电变流器与构网型风储系统(如PowerTitan风电侧集成方案)的智能调度与AGC/AVC响应。其不确定性量化能力可增强iSolarCloud平台对风光储协同场站的预测性运维与调峰调频决策。建议将PSTDT轻量化后嵌入ST系列PCS边缘侧预测模块,或作为PowerStack风电配套储能系统的日前-日内滚动优化输入。