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A Data-Driven Customer Segmentation Strategy Based on Contribution to System Peak Demand

机译:基于对系统峰值需求的贡献的数据驱动的客户分割策略

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摘要

Advanced metering infrastructure (AMI) enables utilities to obtain granular energy consumption data, which offers a unique opportunity to design customer segmentation strategies based on their impact on various operational metrics in distribution grids. However, performing utility-scale segmentation for unobservable customers with only monthly billing information, remains a challenging problem. To address this challenge, we propose a new metric, the coincident monthly peak contribution (CMPC), that quantifies the contribution of individual customers to system peak demand. Furthermore, a novel multi-state machine learning-based segmentation method is developed that estimates CMPC for customers without smart meters (SMs): first, a clustering technique is used to build a databank containing typical daily load patterns in different seasons using the SM data of observable customers. Next, to associate unobservable customers with the discovered typical load profiles, a classification approach is leveraged to compute the likelihood of daily consumption patterns for different unobservable households. In the third stage, a weighted clusterwise regression (WCR) model is utilized to estimate the CMPC of unobservable customers using their monthly billing data and the outcomes of the classification module. The proposed segmentation methodology has been tested and verified using real utility data.
机译:先进的计量基础架构(AMI)使实用程序能够获得粒度能耗数据,这提供了根据其对分布网格中各种运营指标的影响设计客户分割策略的独特机会。但是,只有每月结算信息对不可观察的客户进行实用规模分割,仍然是一个具有挑战性的问题。为了解决这一挑战,我们提出了一种新的公制,重合月度峰值贡献(CMPC),这量化了个别客户对系统峰值需求的贡献。此外,开发了一种新型的基于多状态机学习的分割方法,用于估计没有智能仪表的客户的CMPC(SMS):首先,使用群集技术使用SM数据构建包含典型的日常负载模式的数据库可观察的客户。接下来,要将不可观察的客户与已发现的典型负载配置文件联系起来,可以利用分类方法来计算不同不可观察家庭的日常消费模式的可能性。在第三阶段,利用加权集群回归(WCR)模型来使用其每月结算数据和分类模块的结果来估计未接受的客户的CMPC。已经使用真正的实用程序进行了测试和验证所提出的分段方法。

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