Schirmer Pascal A, Mporas Iosif, Paraskevas Michael
Communications and Intelligent Systems Group, School of Engineering and Computer Science, University of Hertfordshire, Hatfield AL10 9AB, UK.
Computer Technology Institute and Press "Diophantus", Dept of Electrical and Computer Engineering, University of Peloponnese, 221 00 Tripoli, Greece.
Entropy (Basel). 2020 Jan 6;22(1):71. doi: 10.3390/e22010071.
In this article an energy disaggregation architecture using elastic matching algorithms is presented. The architecture uses a database of reference energy consumption signatures and compares them with incoming energy consumption frames using template matching. In contrast to machine learning-based approaches which require significant amount of data to train a model, elastic matching-based approaches do not have a model training process but perform recognition using template matching. Five different elastic matching algorithms were evaluated across different datasets and the experimental results showed that the minimum variance matching algorithm outperforms all other evaluated matching algorithms. The best performing minimum variance matching algorithm improved the energy disaggregation accuracy by 2.7% when compared to the baseline dynamic time warping algorithm.
本文提出了一种使用弹性匹配算法的能源分解架构。该架构使用参考能源消耗特征数据库,并通过模板匹配将其与传入的能源消耗帧进行比较。与基于机器学习的方法需要大量数据来训练模型不同,基于弹性匹配的方法没有模型训练过程,而是使用模板匹配进行识别。在不同数据集上评估了五种不同的弹性匹配算法,实验结果表明最小方差匹配算法优于所有其他评估的匹配算法。与基线动态时间规整算法相比,性能最佳的最小方差匹配算法将能源分解准确率提高了2.7%。