减少传感器的数量:感应声发射来估计家电的能源使用

F. Englert, Irina Diaconita, A. Reinhardt, A. Alhamoud, Richard Meister, Lucas Backert, R. Steinmetz
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引用次数: 15

摘要

由于能源价格的上涨,多种解决方案已经出现,以使用户意识到不必要的电器操作,例如,实时消耗显示或基于定时器的可切换墙壁插座。这些解决方案的一个共同特点是需要购买和安装额外的硬件,尽管它们的购买成本通常会减少可实现的节省。此外,这些解决方案只允许检索能源消耗的累积数字。然而,特别是在有多人的家庭或办公空间中,将电力消耗归因于个人提供了巨大的潜力来确定可能的节省。因此,我们提出了一个系统,可以根据使用智能手机的音频记录来识别用户行为所产生的能源需求。更准确地说,我们捕获用户的环境声音,并应用适当的过滤步骤,以确定用户当前的活动。我们的结果表明,我们的系统能够以92%的准确率检测16个典型的家庭活动。从950个真实世界的电力消耗轨迹中提取出典型的能源消耗信息,通过注释可检测的家庭活动,可以很好地估计用户生活方式的能源强度。我们新颖的个性化能源监测系统向人们展示他们的个人能源消耗,同时保持用户的舒适度,不再需要额外的硬件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reduce the Number of Sensors: Sensing Acoustic Emissions to Estimate Appliance Energy Usage
As a consequence of rising energy prices, manifold solutions to create user awareness for the unnecessary operation of electric appliances have emerged, e.g., real-time consumption displays or timer-based switchable wall outlets. A common attribute of these solutions is the need to buy and install additional hardware, although their acquisition costs often diminish the attainable savings. Furthermore these solutions only permit to retrieve accumulated figures of the energy consumption. Especially in households or office spaces with multiple persons, however, attributing electricity consumption to individuals provides enormous potential to determine possible savings. We therefore propose a system that allows to identify the energy demand incurred by a user's action based on audio recordings using smartphones. More precisely, we capture the user's ambient sounds and applying suitable filtering steps in order to determine the user's current activity. Our results indicate that our system is capable of detecting 16 typical household activities at an accuracy of 92%. By annotating the detectable household activities with information about typical energy consumptions, extracted from 950 real-world power consumption traces, a good estimate of the energy intensity of the users' lifestyles can be made. Our novel personalized energy monitoring system shows people their personal energy consumption, while maintaining their user comfort and relinquishing the need for additional hardware.
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