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Hybrid Classification Method to Detect the Presence of Human in a Smart Building Environment

机译:混合分类方法检测智能建筑环境中人类存在的方法

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There are various types of sensors to detect the presence of human available today. However, the implementation of sensors only is not enough to detect human presence accurately. This occupancy aspect is important as it is one of the factors that affect energy consumption in the building which had been neglected. In order to increase the accuracy of human presence, the machine learning method needs to be applied. The main objective of this study is to develop a better system to detect the presence of human in the smart buildings based on sensor and machine learning methods. Since this study used two different types of sensors, a comparison of accuracy between collected data need to be performed. Then, average every hour from the most accurate collected data sensor used to train the model by using a decision tree, k-nearest neighbour and hybrid classification. The accuracy between the classifiers has been compared but it is not satisfactory to prove which classifier is better. Hence, performance evaluations such as receiver operating characteristics curve and root mean square error were applied. The results showed that bagged trees have the highest accuracy which is 67.6% with the lowest root mean square error values and 0.98 area under the receiver operating characteristics curve.
机译:有各种类型的传感器可检测今天的人类存在。然而,传感器的实现是不足以准确地检测人类存在。这一占用方面很重要,因为它是影响忽视的建筑物中能源消耗的因素之一。为了提高人类存在的准确性,需要应用机器学习方法。本研究的主要目的是开发一种更好的系统,可根据传感器和机器学习方法检测智能建筑物中的人类存在的系统。由于本研究使用了两种不同类型的传感器,因此需要执行收集数据之间的精度的比较。然后,使用最精确的收集数据传感器的平均每小时用于通过使用决策树,k-collect邻和混合分类来训练模型。已经比较了分类器之间的准确性,但证明哪个分类器更好并不令人满意。因此,应用了诸如接收器操作特性曲线和均方根误差的性能评估。结果表明,袋装树具有最高的精度,最高精度为67.6%,具有最低的均线误差值和接收器操作特性曲线下的0.98面积。

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