论文标题

调查在非侵入性负载监测中对真实和剥落的聚集体进行测试之间的性能差距

Investigating the Performance Gap between Testing on Real and Denoised Aggregates in Non-Intrusive Load Monitoring

论文作者

Klemenjak, Christoph, Makonin, Stephen, Elmenreich, Wilfried

论文摘要

算法的审慎和有意义的性能评估对于任何研究领域的发展至关重要。在非侵入性负载监控(NILM)领域,可以在现实世界中的骨料信号上进行性能评估,该信号由智能能量表或单个负载信号的人工叠加提供(即固定骨料)。长期以来一直怀疑,对这些脱氧骨料进行测试提供了更好的评估结果,这主要是因为信号不那么复杂。现实世界中信号中的复杂性随未知/未跟踪负载的数量而增加。尽管这是一个已知的绩效报告问题,但对实际和deno的测试之间的实际绩效差距进行了调查。在本文中,我们研究了对现实世界的测试与deno的聚集体之间的性能差距,目的是使这一问题清晰起来。从评估数据集中的噪声水平开始,我们发现测试用例有显着差异。我们对包括三种负载分解算法的评估设置有广泛的见解,其中两个依赖于神经网络体系结构。本文介绍的结果是,基于涵盖三种上升噪声水平的三种情况的研究,表明了载荷分解算法的强烈趋势,可在DeNoed的骨料信号上提供更好的性能。仔细研究我们的研究结果表明,所有设备类型都可以遵守这种现象。我们通过讨论可能导致尼尔姆实物和剥落测试之间这些巨大差距的方面来结束论文。

Prudent and meaningful performance evaluation of algorithms is essential for the progression of any research field. In the field of Non-Intrusive Load Monitoring (NILM), performance evaluation can be conducted on real-world aggregate signals, provided by smart energy meters or artificial superpositions of individual load signals (i.e., denoised aggregates). It has long been suspected that testing on these denoised aggregates provides better evaluation results mainly due to the the fact that the signal is less complex. Complexity in real-world aggregate signals increases with the number of unknown/untracked load. Although this is a known performance reporting problem, an investigation in the actual performance gap between real and denoised testing is still pending. In this paper, we examine the performance gap between testing on real-world and denoised aggregates with the aim of bringing clarity into this matter. Starting with an assessment of noise levels in datasets, we find significant differences in test cases. We give broad insights into our evaluation setup comprising three load disaggregation algorithms, two of them relying on neural network architectures. The results presented in this paper, based on studies covering three scenarios with ascending noise levels, show a strong tendency towards load disaggregation algorithms providing significantly better performance on denoised aggregate signals. A closer look into the outcome of our studies reveals that all appliance types could be subject to this phenomenon. We conclude the paper by discussing aspects that could be causing these considerable gaps between real and denoised testing in NILM.

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