论文标题

在动态网格电压条件下,基于多头卷积神经网络的非侵入负载监测算法

A Multi-Head Convolutional Neural Network Based Non-Intrusive Load Monitoring Algorithm Under Dynamic Grid Voltage Conditions

论文作者

Grover, Himanshu, Panwar, Lokesh, Verma, Ashu, Panigrahi, B. K., Bhatti, T. S.

论文摘要

近来,由于其潜在的节能和管理的潜力,非侵入性负载监测(NILM)已成为分配级别能源管理系统的重要工具。但是,由于实时负载和各种负载组成的差异很高,智能建筑环境中的负载监控是具有挑战性的。此外,随着智能电表数据的音量和维度的增加,准确性和计算时间是关键因素。鉴于这些挑战,本文提出了在动态网格电压条件下使用多头(MH-NET)卷积神经网络(CNN)改进的NILM技术。提出的CNN模型引入了注意力层,这有助于提高设备功耗的估计精度。在动态网格电压下,已在实验实验室设置上进行了多个电器集的实验实验室设置,已在实验实验室设置上进行了验证。此外,已在广泛使用的英国数据数据上验证了所提出的模型的有效性,并将其性能与现有的NILM技术进行了比较。结果表明,所提出的模型可以准确地识别设备,功耗及其在实际动态网格电压条件下即使是使用时间。

In recent times, non-intrusive load monitoring (NILM) has emerged as an important tool for distribution-level energy management systems owing to its potential for energy conservation and management. However, load monitoring in smart building environments is challenging due to high variability of real-time load and varied load composition. Furthermore, as the volume and dimensionality of smart meters data increases, accuracy and computational time are key concerning factors. In view of these challenges, this paper proposes an improved NILM technique using multi-head (Mh-Net) convolutional neural network (CNN) under dynamic grid voltage conditions. An attention layer is introduced into the proposed CNN model, which helps in improving estimation accuracy of appliance power consumption. The performance of the developed model has been verified on an experimental laboratory setup for multiple appliance sets with varied power consumption levels, under dynamic grid voltages. Moreover, the effectiveness of the proposed model has been verified on widely used UK-DALE data, and its performance has been compared with existing NILM techniques. Results depict that the proposed model accurately identifies appliances, power consumptions and their time-of-use even during practical dynamic grid voltage conditions.

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