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面向时空可再生能源预测的图状态空间模型
Graph State-Space Models for Spatio-Temporal Renewable Energy Forecasting
| 作者 | Alessio Verdone · Simone Scardapane · Rodolfo Araneo · Massimo Panella |
| 期刊 | IEEE Transactions on Industry Applications |
| 出版日期 | 2025年10月 |
| 卷/期 | 第 62 卷 第 2 期 |
| 技术分类 | 智能化与AI应用 |
| 技术标签 | 深度学习 机器学习 模型预测控制MPC 风光储 |
| 相关度评分 | ★★★★★ 5.0 / 5.0 |
| 关键词 |
语言:
中文摘要
本文提出基于图结构的状态空间模型,用于提升风电与光伏电站功率的时空联合预测精度。针对计算开销问题,设计轻量级miniGConvLSTM/GRU模型,在精度与资源效率间取得平衡,支撑实际能源管理系统部署。
English Abstract
Structured state-space models have shown promising results for temporal prediction of demand in renewable energy systems. However, such standard models consider each time-series individually, neglecting spatial and logical correlations between them. In real-world applications, forecasting models must also balance predictive accuracy with practical constraints such as computational cost, available resources, and deployment feasibility. As a solution, in this paper we propose graph-based extensions of structured state-space models for prediction tasks in renewable energy datasets, represented by solar and wind power plants. In order to explore the effectiveness of state-space mechanisms in this context, we adopt the Spatial-Temporal Graph Mamba model, which demonstrates excellent predictive performance but involves a relatively high computational cost due to its complexity. To address this limitation, we also introduce two lightweight and computationally efficient models, namely miniGConvLSTM and miniGConvGRU, which effectively combine the benefits of state-space modeling with graph-based processing. These models aim at striking a better balance between accuracy and resource efficiency, making them particularly suitable for real-world forecasting scenarios. Finally, we discuss the implications of these findings for future research and the potential for integrating graph-based state-space models into real-world energy management systems.
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SunView 深度解读
该研究高度契合阳光电源iSolarCloud智能运维平台及PowerTitan/ST系列储能系统的短期功率预测需求。图神经网络融合状态空间建模可显著提升多站点光伏电站(如组串式逆变器集群)与风电场协同预测精度,优化ST PCS的充放电调度策略;建议将miniGConvGRU嵌入iSolarCloud边缘侧推理模块,降低云端负载,增强户用及工商业光储系统实时响应能力。