使用基于形态的负载轮廓聚类的负载管理应用程序的综合基准系统

F. Harirchi, R. Hadidi, Bill Schroeder
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引用次数: 0

摘要

在诸如调峰、能源效率、电价设计和需求响应等建筑需求管理应用中,主要关注的问题之一是来自不同建筑类型负载模式、其规格和特征的有限知识。在这方面,设计一个可靠的和全面的基准系统的负荷概况将是一个关键的首要任务。这种百科全书式的数据库在评估建筑物的不同需求侧管理方法方面发挥着关键作用。在这项工作中,我们的目标是通过对包括商业、教育、工业和杂货建筑在内的各种负荷类型的大型年度数据集进行分类,定义一个适当的基准系统来评估建筑物负荷管理方法的有效性。为此,首先将每栋建筑的日荷载模式视为单独的荷载样本。然后,使用形态学滤波过程对每个负载样本进行分割。接下来,从片段中提取一组基于能量的特征,并将其提供给分层聚类算法,以将这个庞大的数据集划分为最优数量的类。最后,每个建筑物根据其可能包含的负载类的总数被分配到不同的类别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comprehensive Benhcmark System for Load Management Applications Using Morphological-based Load Profile Clustering
One of the main concerns in building demand management applications such as peak shaving, energy efficiency, tariff design and demand response is the limited knowledge from different building-type load patterns, their specifications, and features. In this regard, designing a reliable and comprehensive benchmark system for load profiles would be a critical primary task. Such an encyclopedic database plays a critical role in evaluating different demand side management approaches for buildings. In this work we aim to define an appropriate benchmark system to assess efficacy of buildings load management methods by classifying a large yearly dataset of various load types including commercial, educational, industrial, and grocery buildings. For this purpose, first, daily load patterns of each building are considered as individual load samples. Then, a morphological filtering procedure is used in order to segmentize each of these load samples. Next, a set of energy-based features is extracted from segments and is fed to a hierarchical clustering algorithm to partition this enormous dataset into an optimal number of classes. Finally, each building is assigned to different categories based on the total number of load classes it may include.
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