上海交通大学学报 ›› 2022, Vol. 56 ›› Issue (5): 554-563.doi: 10.16183/j.cnki.jsjtu.2022.040
所属专题: 《上海交通大学学报》“新型电力系统与综合能源”专题(2022年1~6月)
李林晏1, 韩爽1, 乔延辉1, 李莉1(), 刘永前1, 阎洁1, 刘海东2
收稿日期:
2022-02-22
出版日期:
2022-05-28
发布日期:
2022-06-07
通讯作者:
李莉
E-mail:lili@ncepu.edu.cn
作者简介:
李林晏(1997-),男,山西省运城市人,硕士生,从事风光出力特性分析、风光互补系统优化调度研究.
基金资助:
LI Linyan1, HAN Shuang1, QIAO Yanhui1, LI Li1(), LIU Yongqian1, YAN Jie1, LIU Haidong2
Received:
2022-02-22
Online:
2022-05-28
Published:
2022-06-07
Contact:
LI Li
E-mail:lili@ncepu.edu.cn
摘要:
风光-电动汽车协同调度能够有效降低风光出力和电动汽车无序充电等多重不确定性对电力系统的不利影响.现有优化调度模型多以等效负荷波动最小为优化目标,仅考虑了等效负荷的整体波动性,无法衡量风光出力与负荷的匹配度且并未考虑不同出力场景下风光出力的差异性.针对上述问题,提出一种面向高比例新能源并网场景的风光-电动车协同调度方法.构建基于蒙特卡罗模拟的电动汽车无序充电模型;基于风光出力预测数据,构建基于Gap statistic和K-means++算法的风光出力典型日划分模型;以等效负荷方差和负荷追踪系数最小为双优化目标,构建风光-电动汽车协同调度模型,并采用NSGA-II算法求解.结果表明:所提模型能够有效提升风光出力与负荷的匹配度,降低等效负荷波动性,从而缓解风光出力和电动汽车无序充电等多重不确定性对电力系统的不利影响.
中图分类号:
李林晏, 韩爽, 乔延辉, 李莉, 刘永前, 阎洁, 刘海东. 面向高比例新能源并网场景的风光-电动车协同调度方法[J]. 上海交通大学学报, 2022, 56(5): 554-563.
LI Linyan, HAN Shuang, QIAO Yanhui, LI Li, LIU Yongqian, YAN Jie, LIU Haidong. A Wind-Solar-Electric Vehicles Coordination Scheduling Method for High Proportion New Energy Grid-Connected Scenarios[J]. Journal of Shanghai Jiao Tong University, 2022, 56(5): 554-563.
表1
不同典型日出力场景下优化调度结果
典型日 | 优化 目标 | 优化调度结果 | |||
---|---|---|---|---|---|
F2 | F1/MW2 | F3/MW | α/% | ||
4 | 单目标 | 0.10 | 3395218.02 | 16110.13 | 95.06 |
双目标 | 0.06 | 3099184.40 | 13797.68 | 95.04 | |
5 | 单目标 | 0.11 | 2012967.13 | 14637.51 | 95.19 |
双目标 | 0.07 | 1832434.89 | 14463.81 | 95.03 | |
9 | 单目标 | 0.08 | 6138278.51 | 24960.08 | 95.01 |
双目标 | 0.05 | 5561544.85 | 23093.18 | 95.00 | |
12 | 单目标 | 0.08 | 740009.18 | 13849.89 | 95.19 |
双目标 | 0.05 | 475042.78 | 11241.12 | 95.03 | |
15 | 单目标 | 0.09 | 1481212.29 | 20593.76 | 95.01 |
双目标 | 0.04 | 973148.80 | 9973.25 | 95.00 |
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