多滞后马尔可夫链混合下的单人办公室学习占用

C. Manna, D. Fay, Kenneth N. Brown, Nic Wilson
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引用次数: 17

摘要

对于采用预测控制技术的节能建筑来说,单人办公室的实时入住率预测问题至关重要。由于入住率动态的高度不确定性,入住率的建模和预测是一个具有挑战性的问题。本文提出了一种学习和预测办公大楼中单个人员存在的算法,该算法将不同时间滞后的人员行为视为多个马尔可夫模型的集合。该模型使用安装在三栋不同建筑中的PIR传感器收集的真实占用数据进行了测试,并与最先进的方法进行了比较,比最佳比较方法平均减少了5%的错误率。
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Learning Occupancy in Single Person Offices with Mixtures of Multi-lag Markov Chains
The problem of real-time occupancy forecasting for single person offices is critical for energy efficient buildings which use predictive control techniques. Due to the highly uncertain nature of occupancy dynamics, the modeling and prediction of occupancy is a challenging problem. This paper proposes an algorithm for learning and predicting single occupant presence in office buildings, by considering the occupant behaviour as an ensemble of multiple Markov models at different time lags. This model has been tested using real occupancy data collected from PIR sensors installed in three different buildings and compared with state of the art methods, reducing the error rate by on average 5% over the best comparator method.
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