TSILNet:基于两级改进 TCN 与 IECA-LSTM 结合的新型能源分解混合模型

IF 6.1 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Ziwei Zhu, Mengran Zhou, Feng Hu, Kun Wang, Guangyao Zhou, Weile Kong, Yijie Hu, Enhan Cui
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引用次数: 0

摘要

非侵入式负荷监测(NILM)技术旨在从家庭总负荷信号中推断出电器的运行信息,这对节能和能源规划具有重要意义。然而,现有方法难以有效捕捉用电流的复杂非线性特征,影响了能量分解的准确性。为此,本文设计了一种基于时序卷积网络(TCN)、高效信道注意(ECA)和长短时记忆(LSTM)的方法。该方法首先创造性地提出了两级改进 TCN(TSTCN),克服了其提取不连续信息和长距离信息相关性差的问题,同时增强了提取高层负载特征的能力。然后,嵌入新颖的改进 ECA 关注机制(IECA),并结合跳接技术,对重要特征图进行信道加权关注,促进信息融合。最后,引入具有强大时间记忆能力的 LSTM 来学习负载功率序列中的依赖关系,实现负载分解。在 REDD 和 UK-DALE 这两个实际数据集上的实验表明,所提出的模型明显优于其他 NILM 算法,并实现了对实际家电运行功率的满意跟踪。结果表明,所有电器的平均绝对误差(MAE)平均降低了 18.67%,F1 分数提高了 38.70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TSILNet: A novel hybrid model for energy disaggregation based on two-stage improved TCN combined with IECA-LSTM

Non-intrusive load monitoring (NILM) technology aims to infer the operation information of electrical appliances from the total household load signals, which is of great significance for energy conservation and planning. However, existing methods are difficult to effectively capture the complex nonlinear features of the power consumption flow, which affects the energy disaggregation accuracy. To this end, this paper designs a method based on temporal convolutional network (TCN), efficient channel attention (ECA), and long short-term memory (LSTM). The method first creatively proposes a two-stage improved TCN (TSTCN), which overcomes its problems of extracting discontinuous information and poor correlation of long-distance information while enhancing the ability to extract high-level load features. Then a novel improved ECA attention mechanism (IECA) is embedded, which is also combined with the skip connection technique to pay channel-weighted attention to important feature maps and promote information fusion. Finally, the LSTM with strong temporal memory capability is introduced to learn the dependencies in the load power sequence and realize load disaggregation. Experiments on two real-world datasets, REDD and UK-DALE, show that the proposed model significantly outperforms other comparative NILM algorithms and achieves satisfactory tracking with the actual appliance operating power. The results show that the mean absolute error (MAE) of all appliances decreases by 18.67% on average, and the F1 score improves by 38.70%.

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来源期刊
Building Simulation
Building Simulation THERMODYNAMICS-CONSTRUCTION & BUILDING TECHNOLOGY
CiteScore
10.20
自引率
16.40%
发文量
0
审稿时长
>12 weeks
期刊介绍: Building Simulation: An International Journal publishes original, high quality, peer-reviewed research papers and review articles dealing with modeling and simulation of buildings including their systems. The goal is to promote the field of building science and technology to such a level that modeling will eventually be used in every aspect of building construction as a routine instead of an exception. Of particular interest are papers that reflect recent developments and applications of modeling tools and their impact on advances of building science and technology.
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