基于智能传感器能量分解的高效局部变压器

Zhenrui Yue, Huimin Zeng, Ziyi Kou, Lanyu Shang, Dong Wang
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引用次数: 3

摘要

现代基于智能传感器的能源管理系统利用非侵入式负载监测(NILM)来实时预测和优化设备负载分布。NILM,即能量分解,是指以聚合的功率信号(即主通道上的智能传感器)为条件对用电量进行分解。基于传感技术的实时家电功率预测,能量分解在提高用电效率和降低能耗方面具有很大的潜力。随着变压器模型的引入,NILM在预测设备功率读数方面取得了显着改进。然而,由于序列长度为1,变压器的复杂度为0 (l2),因此效率较低。此外,由于在局部环境中缺乏感应偏置,变压器在序列到点设置中可能无法捕获局部信号模式。在这项工作中,我们提出了一种高效的局部变压器,用于非侵入式负载监测(ELTransformer)。具体来说,我们利用归一化函数并切换矩阵乘法的顺序来近似自关注并降低计算复杂性。此外,我们引入了稀疏局部注意头和相对位置编码的局部性建模,以提高模型提取短期局部模式的能力。据我们所知,ELTransformer是第一个在NILM中解决计算复杂性和局部性建模的NILM模型。通过广泛的实验和定量分析,我们证明了所提出的ELTransformer的效率和有效性,与最先进的基线相比有了相当大的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Localness Transformer for Smart Sensor-Based Energy Disaggregation
Modern smart sensor-based energy management systems leverage non-intrusive load monitoring (NILM) to predict and optimize appliance load distribution in real-time. NILM, or energy disaggregation, refers to the decomposition of electricity usage conditioned on the aggregated power signals (i.e., smart sensor on the main channel). Based on real-time appliance power prediction using sensory technology, energy disaggregation has great potential to increase electricity efficiency and reduce energy expenditure. With the introduction of transformer models, NILM has achieved significant improvements in predicting device power readings. Nevertheless, transformers are less efficient due to O(l2) complexity w.r.t. sequence length l. Moreover, transformers can fail to capture local signal patterns in sequence-to-point settings due to the lack of inductive bias in local context. In this work, we propose an efficient localness transformer for non-intrusive load monitoring (ELTransformer). Specifically, we leverage normalization functions and switch the order of matrix multiplication to approximate self-attention and reduce computational complexity. Additionally, we introduce localness modeling with sparse local attention heads and relative position encodings to enhance the model capacity in extracting short-term local patterns. To the best of our knowledge, ELTransformer is the first NILM model that addresses computational complexity and localness modeling in NILM. With extensive experiments and quantitative analyses, we demonstrate the efficiency and effectiveness of the the proposed ELTransformer with considerable improvements compared to state-of-the-art baselines.
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