Modeling Occupancy Behavior for Energy Efficiency and Occupants Comfort Management in Intelligent Buildings

Tina Yu
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引用次数: 63

Abstract

We applied genetic programming algorithm to learn the behavior of an occupant in single person office based on motion sensor data. The learned rules predict the presence and absence of the occupant with 80\%–83\% accuracy on testing data from 5 different offices. The rules indicate that the following variables may influence occupancy behavior: 1) the day of week, 2) the time of day, 3) the length of time the occupant spent in the previous state, 4) the length of time the occupant spent in the state prior to the previous state, 5) the length of time the occupant has been in the office since the first arrival of the day. We evaluate the rules with various statistics, which confirm some of the previous findings by other researchers. We also provide new insights about occupancy behavior of these offices that have not been reported previously.
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智能建筑中节能与舒适度管理的使用行为建模
在运动传感器数据的基础上,应用遗传规划算法学习了单人办公室中乘员的行为。根据来自5个不同办公室的测试数据,学习的规则预测居住者在场和不在场的准确率为80% - 83%。规则表明,以下变量可能影响占用行为:1)星期几,2)一天中的时间,3)占用者在前一状态中花费的时间长度,4)占用者在前一状态之前花费的时间长度,5)占用者从第一天到达办公室以来在办公室的时间长度。我们用各种统计数据来评估这些规则,这些数据证实了其他研究人员之前的一些发现。我们还提供了以前没有报道过的关于这些办公室的占用行为的新见解。
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