基于支持向量机低频采样电力负荷分类的非侵入式负荷监测研究

IF 0.9 Q3 ENGINEERING, MULTIDISCIPLINARY Journal of Engineering and Technological Sciences Pub Date : 2023-05-12 DOI:10.5614/j.eng.technol.sci.2023.55.2.1
E. Leksono, Auditio Mandhany, Irsyad Nashirul Haq, J. Pradipta, Putu Handre Kertha Utama, Reza Fauzi Iskandar, Rezky Mahesa Nanda
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引用次数: 0

摘要

非侵入式负载监测(NILM)是一种很有前途的方法,可以用较少的仪器提供电器的能耗监测和电流和电压数据分析。提出了一种基于支持向量机的电力负荷分类模型。选择支持向量机是为了保持较低的计算成本,并且能够实现嵌入式系统。利用SVM模型对空调、灯泡和其他未分类的电子产品及其组合的开/关状态进行分类。它利用每分钟捕获的低频采样数据,或以0.0167 Hz的速率。利用有功和无功功率的变化作为模型训练的特征。模型的最优核为径向基函数(RBF)核,C和gamma值分别为88.587和2.336作为超参数,模型精度较高。在实时条件下的测试中,该模型对电气负载的开/关状态进行分类,准确率为0.93,召回率为0.91,f值为0.91。测试结果表明,该模型可以实时应用,精度高,并在嵌入式系统的现场实现中具有良好的性能。
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Development of Non-Intrusive Load Monitoring of Electricity Load Classification with Low-Frequency Sampling Based on Support Vector Machine
Non-intrusive load monitoring (NILM) is a promising approach to provide energy consumption monitoring of electrical appliances and analysis of current and voltage data with less instrumentation. This paper proposes an electrical load classification model using support vector machine (SVM). SVM was chosen to keep the computational cost low and be able to implement an embedded system. The SVM model was utilized to classify the on/off state of air conditioners, light bulbs, other uncategorized electronics, and their combinations. It utilizes low-frequency sampling data captured every minute, or at a 0.0167 Hz rate. Utilization change in active and reactive power was used as a feature in the model training. The optimal kernel for the model was the radial basis function (RBF) kernel with C and gamma values of 88.587 and 2.336 as hyperparameters, producing a highly accurate model. In testing with real-time conditions, the model classified the on/off state of the electrical loads with 0.93 precision, 0.91 recall, and 0.91 f-score. The results of testing proved that the model can be applied in real time with high accuracy and with an acceptable performance in field implementation using an embedded system.
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来源期刊
Journal of Engineering and Technological Sciences
Journal of Engineering and Technological Sciences ENGINEERING, MULTIDISCIPLINARY-
CiteScore
2.30
自引率
11.10%
发文量
77
审稿时长
24 weeks
期刊介绍: Journal of Engineering and Technological Sciences welcomes full research articles in the area of Engineering Sciences from the following subject areas: Aerospace Engineering, Biotechnology, Chemical Engineering, Civil Engineering, Electrical Engineering, Engineering Physics, Environmental Engineering, Industrial Engineering, Information Engineering, Mechanical Engineering, Material Science and Engineering, Manufacturing Processes, Microelectronics, Mining Engineering, Petroleum Engineering, and other application of physical, biological, chemical and mathematical sciences in engineering. Authors are invited to submit articles that have not been published previously and are not under consideration elsewhere.
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