Using rule mining to understand appliance energy consumption patterns

Sami Rollins, Nilanjan Banerjee
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引用次数: 42

Abstract

Managing energy in the home is key to creating a sustainable future for our society. More tools are increasingly available to measure home energy usage, however these tools provide little insight into questions such as why an appliance consumes more energy than normal or what kinds of behavioral changes might be most likely to reduce energy usage in the home. To answer these questions, a deeper understanding of the causal factors that influence energy usage is necessary. In this work, we conduct a broad study of factors that influence energy consumption of individual devices in the home. Our first contribution is collection of a context-rich data set from six homes across the United States. The second contribution of this work is a set of insights into key factors influencing energy usage derived by the novel application of a rule mining algorithm to identify significant associations between energy usage and four key features: hour of the day, day of the week, use of other appliances in the home, and user-supplied annotations of activities such as working or cooking. Our analysis confirms our hypothesis that, though most devices show a regular pattern of daily or weekly use, this is not true for all devices. Associations that relate use of two different devices in the same home are often stronger, and are observed for nearly 25% of device uses. Overall, we observe that the associations derived from the first five weeks of data in our data set are sufficient to explain nearly 70% of the device uses in the subsequent five weeks of data, and over 90% of the associations identified during the first five weeks recur in the latter portion of the data set. The associations identified by our approach may be used to to aid in end-user applications that heighten awareness and encourage energy savings, improve energy disaggregation algorithms, or even detect anomalous uses that may signal problems in aging-in-place homes.
使用规则挖掘来理解家电能耗模式
管理家庭能源是为我们的社会创造可持续未来的关键。越来越多的工具可以用来测量家庭能源使用情况,但是这些工具对诸如为什么一个电器比正常情况消耗更多的能源或什么样的行为改变最有可能减少家庭能源使用等问题提供的见解很少。为了回答这些问题,有必要更深入地了解影响能源使用的因果因素。在这项工作中,我们对影响家庭中单个设备能耗的因素进行了广泛的研究。我们的第一个贡献是收集了来自美国六个家庭的上下文丰富的数据集。这项工作的第二个贡献是对影响能源使用的关键因素的一系列见解,这些因素是通过规则挖掘算法的新应用得出的,该算法可以识别能源使用与四个关键特征之间的重要关联:一天中的小时、一周中的哪一天、家中其他电器的使用以及用户提供的活动注释,如工作或烹饪。我们的分析证实了我们的假设,即尽管大多数设备显示出每天或每周使用的规律,但并非所有设备都是如此。在同一家中使用两种不同设备的关联往往更强,并且在近25%的设备使用中观察到这种关联。总的来说,我们观察到,从我们数据集中的前五周数据中得出的关联足以解释随后五周数据中近70%的设备使用情况,并且在前五周确定的关联中超过90%在数据集中的后半部分重复出现。通过我们的方法确定的关联可用于帮助终端用户应用程序,以提高意识并鼓励节能,改进能源分解算法,甚至检测可能在原地老龄化家庭中发出问题信号的异常使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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