月刊
ISSN 1000-7229
CN 11-2583/TM
电力建设 ›› 2022, Vol. 43 ›› Issue (11): 132-141.doi: 10.12204/j.issn.1000-7229.2022.11.013
收稿日期:
2022-02-27
出版日期:
2022-11-01
发布日期:
2022-11-03
通讯作者:
杨洋
E-mail:ytj1975@dlut.edu.cn;bertyy1219@163.com;19895864@qq.com
作者简介:
袁铁江(1975),男,博士(后),教授,博士生导师,主要研究方向为氢能与电力、化石能源集成技术、电力储能及其并网技术、新能源发电并网技术、统一能源系统理论与方法,E-mail: ytj1975@dlut.edu.cn;基金资助:
YUAN Tiejiang1(), YANG Yang1(), DONG Litong1,2()
Received:
2022-02-27
Online:
2022-11-01
Published:
2022-11-03
Contact:
YANG Yang
E-mail:ytj1975@dlut.edu.cn;bertyy1219@163.com;19895864@qq.com
Supported by:
摘要:
为了解决风电出力的随机性导致微电网并网规划运行时鲁棒性与计算效率难以平衡的问题,提出一种与典型日负荷场景匹配的风电出力场景构造方法。首先在微电网规划中重点考虑日负荷趋势和峰谷时段位置,利用隶属度函数提取日负荷曲线趋势和峰谷时段信息,并结合改进有序聚类提出典型日负荷选取方法;在典型日负荷的有效时间内,利用风电出力最大增加量和最大减少量,结合插值法提出风电场景构造方法。然后建立评价指标体系来评价典型日负荷选取与对应风电场景构造效果。最后利用电网数据验证所提模型的有效性。
中图分类号:
袁铁江, 杨洋, 董力通. 与典型日负荷匹配的风电出力场景构建方法[J]. 电力建设, 2022, 43(11): 132-141.
YUAN Tiejiang, YANG Yang, DONG Litong. Construction Method of Wind Power Output Scenario Matching with Typical Daily Load[J]. ELECTRIC POWER CONSTRUCTION, 2022, 43(11): 132-141.
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