Shareef Hussain, Asna Madathodika, Errouissi Rachid, Prasanthi Achikkulath
Electrical and Communication Engineering Department, United Arab Emirates University, Al Ain 15551, United Arab Emirates.
Sensors (Basel). 2023 Aug 3;23(15):6926. doi: 10.3390/s23156926.
Monitoring electricity energy usage can help to reduce power consumption considerably. Among load monitoring techniques, non-intrusive load monitoring (NILM) provides a cost-efficient solution to identify individual load consumption details from the aggregate voltage and current measurements. Existing load monitoring techniques often require large datasets or use complex algorithms to obtain acceptable performance. In this paper, a NILM technique using six non-redundant current waveform features with rule-based set theory (CRuST) is proposed. The architecture consists of an event detection stage followed by preprocessing and framing of the current signal, feature extraction, and finally, the load identification stage. During the event detection stage, a change in connected loads is ascertained using current waveform features. Once an event is detected, the aggregate current is processed and framed to obtain the event-causing load current. From the obtained load current, the six features are extracted. Furthermore, the load identification stage determines the event-causing load, utilizing the features extracted and the appliance model. The results of the CRuST NILM are evaluated using performance metrics for different scenarios, and it is observed to provide more than 96% accuracy for all test cases. The CRuST NILM is also observed to have superior performance compared to the feed-forward back-propagation network model and a few other existing NILM techniques.
监测电能使用情况有助于大幅降低功耗。在负载监测技术中,非侵入式负载监测(NILM)提供了一种经济高效的解决方案,可从总的电压和电流测量值中识别各个负载的消耗细节。现有的负载监测技术通常需要大量数据集或使用复杂算法才能获得可接受的性能。本文提出了一种使用具有基于规则的集合论的六个非冗余电流波形特征的非侵入式负载监测技术(CRuST)。该架构包括一个事件检测阶段,随后是电流信号的预处理和分帧、特征提取,最后是负载识别阶段。在事件检测阶段,利用电流波形特征确定连接负载的变化。一旦检测到事件,就对总电流进行处理和分帧,以获得导致事件的负载电流。从获得的负载电流中提取六个特征。此外,负载识别阶段利用提取的特征和电器模型确定导致事件的负载。使用性能指标对不同场景下的CRuST非侵入式负载监测结果进行评估,观察到在所有测试案例中其准确率均超过96%。与前馈反向传播网络模型和其他一些现有的非侵入式负载监测技术相比,CRuST非侵入式负载监测也表现出卓越的性能。