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Automatic power load event detection and appliance classification based on power harmonic features in nonintrusive appliance load monitoring

机译:在非侵入式设备负载监控中基于功率谐波特征的自动负载事件检测和设备分类

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Home electrical power monitoring plays an important role in reducing energy usage, and non-intrusive appliance load monitoring (NIALM) techniques are the most effective approach for estimating the electrical power consumption of individual appliances. Power load events detection is one of the most important steps in these techniques. This paper presents an automatic power load event detection method: edge symbol detector (ESD) for NIALM. The new transient detection approach can help the system locate all the load events (switch on and switch off) precisely. A modified power appliance classification technique based on power harmonic features and support vector machine (SVM), with higher recognition accuracy and faster computational speed, is also discussed. The experimental results of the new load events detection and classification technique are presented with promising results.
机译:家用电力监视在减少能源使用方面起着重要作用,非侵入式设备负荷监视(NIALM)技术是估算单个设备的电力消耗的最有效方法。电源负载事件检测是这些技术中最重要的步骤之一。本文提出了一种自动功率负载事件检测方法:用于NIALM的边缘符号检测器(ESD)。新的瞬态检测方法可以帮助系统精确定位所有负载事件(打开和关闭)。还讨论了一种基于电力谐波特征和支持向量机(SVM)的改进的电力设备分类技术,具有更高的识别精度和更快的计算速度。提出了新的负荷事件检测与分类技术的实验结果,具有良好的应用前景。

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