注意机制增强神经网络在工业电力数据无创负荷监测中的应用

Jun Wei, Ce Li, Rong Yang, Fangjun Li, Hua Wang
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引用次数: 0

摘要

非侵入式设备负荷监测(NILM)将电力系统的总功耗分解为其贡献设备。以往的研究只考虑使用电器的总功耗信息来分解负荷消耗。除总用电量外,总用电量数据中还包含电流、电压、时间等重要信息,可用于分析负荷用电量信息。因此,我们提出了一种通过关注机制增强的序列到序列网络,有效地整合了电网数据中除总用电量外的外部特征。最后,对某加油站12台电器的用电数据进行了应用和评估,结果表明,该模型的负荷分解准确率达到90.5%。我们的解决方案为NILM在工业领域的应用提供了新的解决方案,有助于更合理地管理能源。
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Application of attention mechanism enhanced neural network in non-invasive load monitoring of industrial power data
The non-intrusive appliance load monitoring (NILM) decomposes the total power consumption of a power system into its contributing appliances. Previous studies only considered using the total power consumption information of appliances to decompose the load consumption. Besides the total electricity consumption, there is also important information such as current, voltage, and time in the total electricity consumption data, which can be used to analyze the load consumption information. Therefore, we proposed a sequence-to-sequence network enhanced by an attention mechanism, which effectively integrated the external features besides the total electricity consumption in grid data. Finally, we applied and evaluated the proposed model on the electricity consumption data of a gas station with 12 appliances, and our model achieved a 90.5% accuracy in load decomposition. Our solution provides a new solution on the application of NILM in the industrial field and helps to manage energy more rationally.
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