综合智慧能源

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基于TimesNet的多源特征融合非侵入式负荷监测

刘兴杰, 王晨, 梁英, 薄天利   

  1. 宁夏大学电子与电气工程学院,
    宁夏大学物理学院, 中国
  • 收稿日期:2025-11-07 修回日期:2026-01-21
  • 基金资助:
    国家自然科学基金地区基金(12062023); 宁夏回族自治区重点研发计划社发领域项目(2021BEG03029)

Non-intrusive load monitoring based on multi-source feature fusion of TimesNet

  1. , ,
    , , China
  • Received:2025-11-07 Revised:2026-01-21

摘要: 针对目前非侵入式负荷监测模型过分依赖电器本身的功率特征、导致监测效果难以提升的问题,研究引入温度、湿度及风速等环境因素对用电器使用频率与工作模式的影响,提出一种基于TimesNet的多源特征融合非侵入式负荷监测方法。该方法利用TimesNet模型适配负荷功率序列的多周期性特点,借助Inception网络提取总负荷数据的上下文关系,强化对功率序列多尺度周期性特征的捕捉能力,以获取更贴合电器运行特点的功率特征;其次,针对功率序列与环境序列的时序模式异构性及量纲差异,采用多头自注意力机制实现功率特征与温度、湿度及风速等环境特征的深度融合,有效挖掘多源特征间的潜在关联。将所提模型与六种代表性模型在AMPds2和UK-dale数据集上验证,结果表明,该模型在平均绝对误差(MAE)和均方根误差(RMSE)上均优于对比模型,其中对电热泵、电冰箱等环境敏感型或强周期性电器的识别精度提升尤为显著。这一结果证明,该模型可有效提高整体负荷识别精度,显著改善因过分依赖电器功率特征造成的误差影响,具备出色的负荷监测能力。

关键词: 非侵入式负荷监测, 负荷识别, 非电气量特征, 特征融合, Timesnet模型, 注意力机制

Abstract: To address the issue that existing non-intrusive load monitoring (NILM) models over-rely on the inherent power characteristics of electrical appliances, which restricts the improvement of monitoring performance, this study introduces the impacts of environmental factors (e.g., temperature, humidity, and wind speed) on the usage frequency and operational modes of electrical devices. A novel TimesNet-based multi-source feature fusion method for non-intrusive load monitoring is proposed. Specifically, the TimesNet model is leveraged to accommodate the multi-periodic characteristics of load power sequences. Meanwhile, an Inception network is adopted to extract the contextual correlations of aggregate load data, thereby enhancing the capability of capturing multi-scale periodic features of power sequences and deriving power characteristics that are more consistent with the operational patterns of electrical appliances. Secondly, to tackle the temporal pattern heterogeneity and dimensional differences between power sequences and environmental sequences, a multi-head self-attention mechanism is employed to achieve deep fusion of power features and environmental features (including temperature, humidity, and wind speed), which effectively excavates the potential correlations among multi-source features. The proposed model is validated against six representative models on the AMPds2 and UK-DALE datasets. Experimental results demonstrate that the proposed model outperforms the comparative models in terms of mean absolute error (MAE) and root mean square error (RMSE). Particularly, it achieves a remarkable improvement in identification accuracy for environment-sensitive or strongly periodic appliances such as heat pumps and refrigerators. These results confirm that the proposed model can effectively enhance the overall load identification accuracy, significantly mitigate the error caused by over-reliance on appliance power characteristics, and exhibits excellent load monitoring performance.

Key words: Non-invasive load monitoring, Load identification, Non-electrical quantity characteristics, Feature fusion, Timesnet model, Attention mechanism