基于生成模型的半监督学习优化低压负荷类型识别

Fawaati Tsabita, Nur Rohman W, Rosmaliati, Vita Lystianingrum B. P, M. Purnomo
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引用次数: 0

摘要

电能是现代社会运行所使用的各种电气设备的基本需求。因此,服务提供者必须始终保持服务质量,其中一项措施是保持系统中的谐波内容符合设定的标准。各种各样的电器都使用节能功能,产生高谐波值,可能会对变压器造成损坏。本研究确定了各种类型的负荷组合的谐波值。为了获得负荷谐波数据,对某配电变压器所服务的家庭用户进行了调查和测量。为实现基于谐波的电力负荷类型检测,将半监督学习方法与生成模型算法相结合。在前人研究的基础上,对方法进行了优化,得到了更好的结果。在不同的实验场景下,该方法的平均准确率为83.5%。
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Semi-Supervised Learning Optimization Based on Generative Models to Identify Type Of Electric Load at Low Voltage
Electrical energy is a fundamental requirement for a modern society to operate the various electrical equipment used. So that the service providers must always maintain the quality of service, one measure is to maintain the harmonic content in the system to comply with the standards set. Various kinds of electrical appliances are use energy-saving features that cause high harmonic values that can cause damage to the transformer. This study identifies the harmonic value of various types of load combinations. To obtain the load harmonics data, surveys and measurements have been carried out on household consumers served by a distribution transformer. To detect the type of electrical load based on harmonics, semi-supervised learning method is used with generative model algorithm. Method optimization is performed to produce better results from previous studies. This method yields an average of 83.5% accuracy with various experimental scenarios.
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