A Classification and Synthesis Method for Load Characteristics of Typical Industry Based on Daily Electricity Consumption Curves

Junying Song, Zhenyu Mao, Xinran Li, Taowen Liu, W. Zhong, Yiwei Cui
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引用次数: 1

Abstract

Since the daily load power curves only considers the instantaneous power characteristics of the data point, the larger consumers' load disturbance will affect the ability of the daily load curves to describe the actual load characteristics. Taking the daily load power curves as the only basis to represent the actual load characteristics of consumers may cause misjudgment and bring errors to the description of typical industry load characteristics. In order to solve such problems, this paper uses the traditional K-means clustering technology to obtain daily electricity consumption curves based on the power user electric energy data acquire system, and then obtains more accurate typical industry cluster center curves, and proposes a classification and synthesis method of typical industry load characteristics based on consumers' daily electricity consumption curves. The results show that compared with the traditional clustering method of daily load power curves, the proposed method has certain advantages in clustering results, clustering quality and clustering accuracy.It overcomes the limitations of daily load power curves itself, has the advantage of reflecting the overall trend of load change, and can truly reflect the electricity consumption characteristics of consumers in this area, so it has a good application prospect.
基于日用电量曲线的典型工业负荷特性分类综合方法
由于日负荷功率曲线只考虑数据点的瞬时功率特性,较大的消费者负荷扰动会影响日负荷曲线描述实际负荷特性的能力。将日负荷功率曲线作为代表消费者实际负荷特性的唯一依据,可能会造成误判,给典型行业负荷特性的描述带来误差。为了解决这类问题,本文采用传统的K-means聚类技术,基于电力用户电能数据采集系统获得日用电量曲线,进而得到较为准确的典型行业集群中心曲线,并提出了一种基于消费者日用电量曲线的典型行业负荷特征分类综合方法。结果表明,与传统的日负荷功率曲线聚类方法相比,本文方法在聚类结果、聚类质量和聚类精度方面具有一定的优势。它克服了日负荷功率曲线本身的局限性,具有反映负荷变化整体趋势的优势,能够真实反映该地区消费者的用电特点,具有良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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