Two-stage Clustering for Profiling Residential Customer Demand

S. Mocci, F. Pilo, G. Pisano, M. Troncia
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引用次数: 3

Abstract

Since the power system operation and planning depend on generation and consumption behavior, load and generation patterns are fundamental inputs for power system analyses. TSOs and DSOs use typical daily profiles for representing the consumption of the end-users. The evolution of power systems, due to the increased integration of renewables, and the changed end-users practices are stressing the operation and planning processes. The updating of the typical load profiles to the behavior of current customers is often disregarded, and currently the used profiles refer to out-of-date and incomplete measurement campaigns. This paper proposes an innovative two-stage clustering methodology, able to find typical load profiles of residential customers. The focus to the residential customers is due to their extremely variable behavior in their consumption. The results add to the current practice useful improvements for planning and operation studies.
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住宅客户需求分析的两阶段聚类
由于电力系统的运行和规划取决于发电和用电行为,负荷和发电模式是电力系统分析的基本输入。tso和dso使用典型的日常概况来表示最终用户的消费。由于可再生能源整合的增加,电力系统的发展以及最终用户实践的改变,都在强调运营和规划过程。针对当前客户行为的典型负载配置文件的更新经常被忽略,并且当前使用的配置文件指的是过时和不完整的测量活动。本文提出了一种创新的两阶段聚类方法,能够找到典型的住宅用户负荷分布。对住宅客户的关注是由于他们在消费中的行为非常多变。研究结果为规划和操作研究提供了有益的改进。
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