广东工业大学学报 ›› 2024, Vol. 41 ›› Issue (05): 1-12.doi: 10.12052/gdutxb.240084
• 电气工程 • 下一篇
周永旺, 蔡政彤, 许灿城, 倪强
Zhou Yong-wang, Cai Zheng-tong, Xu Can-cheng, Ni Qiang
摘要: 针对可再生能源与系统负荷波动对综合能源系统多能流分布的不确定性量化问题,提出一种基于数据驱动的综合能源系统概率多能流计算方法。首先,提出了考虑压缩机不同工作模式的综合能源系统多能流计算统一模型,并探讨了压缩机不同工作模式对能流分布的影响;其次,提出基于支持向量回归的概率能流计算方法,先通过多次重复的确定性多能流计算,构建数据样本集,再用支持向量回归挖掘出综合能源系统中已知负荷、网络节点信息与未知节点参数的非线性映射关系;最后,通过算例分析对提出的多能流计算统一模型在不同压缩机工作模式下的有效性进行了验证;通过与传统概率多能流计算方法对比研究,证明提出的数据驱动概率能流计算方法具有更高的计算精度与效率。
中图分类号:
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