Determining relevant features in estimating short-term power load of a small house via feature selection by extreme learning machine

Ö. F. Ertugrul, Necmettin Sezgin, Abdulkerim Öztekin, M. Tagluk
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引用次数: 1

Abstract

Estimating short-term power load is a fundamental issue in the power distribution system. Since short-term power load is related to many parameters such as weather conditions, and time. The aim of this study is to determine the relevant parameters in estimating short-term power load not only in order to decrease the computational cost, but also to achieve higher success rates. Furthermore, by using selected features the required memory, equipment and communication costs are also decreased in real time applications. Feature selection by extreme learning machine method was used in determining relevant features. The short-term power loads of two houses (one of them has a power generation capability) were used in tests and achieved results showed lower error rates were obtained by using less number of features.
利用极限学习机进行特征选择,确定小型住宅短期电力负荷估算的相关特征
短期负荷估算是配电系统中的一个基本问题。由于短期电力负荷与天气条件、时间等诸多参数有关。本研究的目的是确定短期电力负荷估算的相关参数,以降低计算成本,并获得更高的成功率。此外,通过使用选定的功能,所需的内存,设备和通信成本也降低了实时应用。采用极限学习机方法进行特征选择,确定相关特征。在测试中使用了两个房屋的短期电力负荷(其中一个具有发电能力),获得的结果表明,使用较少数量的特征可以获得较低的错误率。
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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