家庭负荷群体参与需求侧响应的复合聚集建模与分析

Xiaoquan Jiao, Qingshan Xu
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引用次数: 0

摘要

为了保证家庭电力系统的稳定运行,提出了家庭负荷群参与需求侧响应的综合聚合模型。根据参与需求侧响应的原则,收集住户电力系统运行参数,计算住户负荷组相应值。根据计算的复合值,对夜间的聚合过程进行处理。然后对聚合过程进行优化,建立快速聚合决策树。根据用户用电习惯和设备运行特点,建立基于潜力评估的聚合模型。实验表明,该研究方法能获得较好的负载响应性能。用户满意度90%以上,负荷调度时间小于1.8s,可降低家庭日常用电量。这证明了该方法的综合性能可以更好,应用效果更理想。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Analysis of Compound Aggregation of Household Load Groups Participating in Demand Side Response
In order to ensure the stable operation of the household power system, a comprehensive aggregation model of the household load group participating in the demand side response is proposed. According to the principle of participating in the demand side response, operation parameters of the household power system are collected and the corresponding values of household load groups are calculated. Based on the calculated composite values, the polymerization process at night is processed. Then the aggregation process is optimized, and a fast aggregation decision tree is established accordingly. The aggregation model based on potential assessment is established according to electricity consumption habits of users and operating characteristics of equipment. The experiment shows that the load response performance of the research method can be better. The user satisfaction is over 90%, the load scheduling time is less than 1.8s, and the daily power consumption of the family can be reduced. This proves that the comprehensive performance of the method can be better and the application effect can be more ideal.
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