Quantifying the Impact of Customized Feedback on User Energy Consumption Behavior with Low-cost IoT Setup

R. Raza, N. Hassan
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Abstract

In this paper, we present the results of an experimental study to understand and quantify the impact of personalized feedback on HVAC energy consumption and wastage inside buildings. We develop a scalable, low-cost Internet of Things (IoT) platform, which was deployed inside a campus building. The data collected was then used to estimate the HVAC energy consumption and wastage in the rooms using energy models and machine learning algorithms. We then design personalized feedback for users in our case study and determine the impact of feedback in changing the energy consumption behavior of users. Users are divided into two groups and each group receives different feedback. The results showed that the energy consumption reduced maximum by 24% and the wastage reduced from 84-100%, as effect of customized feedback.
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通过低成本物联网设置量化定制反馈对用户能耗行为的影响
在本文中,我们提出了一项实验研究的结果,以了解和量化个性化反馈对建筑内暖通空调能耗和浪费的影响。我们开发了一个可扩展的,低成本的物联网(IoT)平台,部署在校园建筑内。收集到的数据然后用于使用能源模型和机器学习算法估计房间的暖通空调能耗和浪费。然后,我们在案例研究中为用户设计个性化反馈,并确定反馈在改变用户能耗行为方面的影响。用户被分成两组,每组收到不同的反馈。结果表明,在定制化反馈的作用下,能耗最大降低24%,浪费从84-100%降低。
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