基于支持向量机、射频和DT算法的家庭用电负荷谐波参数识别

Musrinah, M. A. Murti, Faisal Budiman
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摘要

本研究采用支持向量机、随机森林和决策树三种机器学习模型设计了一个电力负荷/设备识别系统。该系统用于监测正在运行的电气设备的使用情况,以便发现废物的迹象。使用电饭煲、笔记本电脑、台灯、吹风机、风扇、分配器和手机充电器等7种电子设备进行电气设备的数据收集和测试。本研究集成EMG25、电流互感器MSQ-30、电气器件、USB模块RS-485和Raspberry Pi3进行数据处理,通过算法形成系统模型,并对测试系统进行识别。本研究建立了支持向量机、随机森林和决策树三种算法的系统模型,其准确率分别为93.5%、95.5%和92.5%,壁时间分别为0.489、0.337和0.0278秒,能够根据数据特征识别出正确运行的电气设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Household Electric Load Based on Harmonic Parameters Using SVM, RF, and DT Algorithms
This study designed an identification electrical loads/devices system using 3 machine learning models which are Support Vector Machine, Random Forest, and Decision Tree algorithms. The system was applied for monitoring the use of electrical devices that are operating in order to find out the indications of waste. Data collection and testing of electrical devices was carried out using 7 electronic devices, namely rice cookers, laptops, lamps, hair dryers, fans, dispensers, and phone chargers. This study integrated EMG25, Current Transformer MSQ-30, electrical devices, USB Module RS-485 and Raspberry Pi3 for data processing, forming system models by algorithms and testing system identification. This research produced a system model of three algorithm Support Vector Machine, Random Forest, and Decision Tree with an accuracy of 93.5%, 95,5% and 92.5% respectively and wall time 0.489, 0.337, and 0.0278 second it was proven to be able to identify electrical devices that were operating correctly based on data characteristics.
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