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Double K-means methodology to determine Grey Classes in electric frequency variation

机译:双重K均值方法确定电频率变化中的灰色类别

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This article shows how the Double K-means methodology can be used for the proper determination of grey classes over a set of electrical frequency deviation measurements. The Double K-means methodology to determine grey classes has the quality of being automated which allows the execution of its algorithm simultaneously with the input of measurements (online) or with stored measurements (offline). It is a contribution to science by the researcher as it is useful for the analysis of large amounts of oscillating data such as the electrical frequency deviation indicator and other Power Quality parameters using the Grey clustering and Entropy Weight methodology, which allows decision making or qualification of the behavior, service or phenomenon.
机译:本文说明如何使用Double K-means方法在一组电气频率偏差测量值上正确确定灰度等级。确定灰度等级的Double K-means方法具有自动化的质量,它允许在输入测量值(在线)或存储的测量值(离线)的同时执行其算法。这是研究人员对科学的贡献,因为它可用于使用灰色聚类和熵权法分析大量振荡数据(例如,电频率偏差指示器和其他电能质量参数),从而可以进行决策或验证行为,服务或现象。

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