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Datasets for occupancy profiles in apartment-style student housing for occupant behavior studies and application in building energy simulation

机译:公寓式学生住房占用概况的数据集用于占用者行为研究和建筑能量模拟中的应用

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摘要

Building energy simulation (BES) tools fail to capture diversity among occupants’ consumption behaviors by using simple and generic occupancy and load profiles, causing uncertainties in simulation predictions. Thus, generating actual occupancy profiles can lead to more accurate and reliable BES predictions. In this article, occupancy profiles for apartment-style student housing are presented from high-resolution monitored occupancy data. A geo-fencing app was designed and installed on the cellphones of 41 volunteer students living in student housing buildings on Clarkson University's campus. Occupants’ entering and exiting activities were recorded every minute from February 4 to May 10, 2018. Recorded events were sorted out for each individual by the date and time of day considering 1 for ‘entered’ events and 0 for ‘exited’ events to show the probability of presence at each time of day. Accounting for excluded days (234 days with errors and uncertainties), 1,096 daily occupancy observations were retained in the dataset. Two methods were used to analyze the dataset and derive weekday and weekend occupancy schedules. A simple averaging method and K-means clustering techniques were performed [1]. This article provides the input datasets that were used for analysis as well as the outputs of both methods. Occupancy schedules are presented separately for each day of a week, weekdays, and weekend days. To show differences in students’ occupancy patterns, occupancy schedules in 7 clusters for weekdays and 3 clusters for weekend days are provided. These datasets can be beneficial for modelers and researchers for either using provided occupancy schedules in BES tools or understanding occupant behaviors in student housing.
机译:建筑能量模拟(BES)工具通过使用简单和通用的占用和负载概况,无法捕获乘员消费行为之间的多样性,从而导致模拟预测中的不确定性。因此,生成实际占用配置文件可以导致更准确和可靠的预测。在本文中,公寓式学生住房的入住型材从高分辨率监控的占用数据中提出。设计和安装了一个地理围栏应用程序,并安装在克拉克森大学校园的学生住房建筑的41名志愿者学生的手机上。从2018年2月4日至5月10日的每分钟记录乘客进入和退出活动。根据日期和时间,考虑为“进入”活动,为“退出”事件显示,记录的事件是针对每个人的排序每一天的存在概率。在数据集中保留了排除日排除的日子(234天的错误和不确定性),在数据集中保留了1,096个每日入住观察。两种方法用于分析数据集并导出平日和周末占用时间表。进行简单的平均方法和K-Means聚类技术[1]。本文提供了用于分析的输入数据集以及两种方法的输出。入住时间表在一周,平日和周末日单独呈现。为了表明学生的占用模式的差异,提供了7个平日的7个集群中的入住时间表和周末日的3个群集。这些数据集可以有利于建模者和研究人员使用BES工具中提供的占用时间表或理解学生住房中的占用行为。

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