We conducted a field study at a K-12 private school in the suburbs of Melbourne, Australia. The data capture contained two elements: First, a 5-month longitudinal field study In-Gauge using two outdoor weather stations, as well as indoor weather stations in 17 classrooms and temperature sensors on the vents of occupant-controlled room air-conditioners; these were collated into individual datasets for each classroom at a 5-minute logging frequency, including additional data on occupant presence. The dataset was used to derive predictive models of how occupants operate room air-conditioning units. Second, we tracked 23 students and 6 teachers in a 4-week cross-sectional study En-Gage, using wearable sensors to log physiological data, as well as daily surveys to query the occupants' thermal comfort, learning engagement, emotions and seating behaviours. This is the first publicly available dataset studying the daily behaviours and engagement of high school students using heterogeneous methods. The combined data could be used to analyse the relationships between indoor climates and mental states of school students.
翻译:我们在澳大利亚墨尔本郊区的一所K-12私立学校进行了实地研究,数据采集包括两个要素:第一,5个月的纵向实地研究,利用两个室外气象站以及17个教室室内气象站和住客控制室通风口空调的温度传感器,利用2个室外气象站和17个室内气象站进行In-Gauge的为期5个月的In-Gauge实地研究;这些传感器以5分钟的伐木频率被整理成每个教室的单个数据集,包括关于住客存在的额外数据;该数据集用来得出住户如何操作室内空调装置的预测模型;第二,我们跟踪了23名学生和6名教师进行为期4周的跨部门En-Gage研究,利用可磨损传感器记录生理数据,以及每天调查住户的热舒适、学习、情感和座椅行为;这是第一个公开提供的数据集,用多种方法研究高中学生的日常行为和接触情况;综合数据可用于分析室内气候与在校学生精神状态之间的关系。