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New adequacy measures for the evaluation of the load profiling process

机译:用于评估负载分析过程的新的充分性措施

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The process of grouping load curves based on the similarity of their shapes is represented by unsupervised machine learning. Usually, in the load profiling problems, there is no available information about the number of desired clusters. The load data are grouped together and the objective is to minimize various indexes or adequacy measures that are related with the distances between the data within the same cluster. This paper presents all the adequacy measures that have been proposed in the load profiling related literature. Some of these measures show unstable behavior while the number of the output clusters increases. Hence, they are not suitable for defining the optimal number of clusters. Two new adequacy measures, used in other clustering problems are introduced, for easy detection of the appropriate number of clusters. Additionally, two demand pattern representation techniques are compared in terms of minimizing the clustering error.
机译:基于负载曲线形状相似性对负载曲线进行分组的过程由无监督的机器学习来表示。通常,在负载分析问题中,没有有关所需群集数量的可用信息。将负载数据分组在一起,目的是最大程度地减少与同一群集内数据之间的距离相关的各种指标或充分性度量。本文介绍了与负荷剖析相关的文献中提出的所有充分性措施。这些措施中的一些措施表现出不稳定的行为,而输出集群的数量却增加了。因此,它们不适合定义最佳群集数。引入了两个在其他聚类问题中使用的新的充分性度量,以方便检测适当数量的聚类。另外,就最小化聚类误差而言,比较了两种需求模式表示技术。

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