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A machine learning approach to predict the activity of smart home inhabitant

机译:一种机器学习方法,以预测智能家庭居民的活动

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摘要

A smart home inhabitant performs a unique pattern or sequence of tasks repeatedly. Thus, a machine learning approach will be required to build an intelligent network of home appliances, and the algorithm should respond quickly to execute the decision. This study proposes a decision tree-based machine learning approach for predicting the activities using different appliances such as state, locations and time. A noise filter is employed to remove unwanted data and generate task sequences, and dual state properties of a home appliance are utilized to extract episodes from the sequence. An incremental decision tree approach was taken to reduce execution time. The algorithm was tested using a well-known smart home dataset from MavLab. The experimental results showed that the algorithm successfully extracted 689 predictions and their location at 90% accuracy, and the total execution time was 94 s, which is less than that of existing methods. A hardware prototype was designed using Raspberry Pi 2 B to validate the proposed prediction system. The general-purpose input-output (GPIO) interfaces of Raspberry Pi 2 B were used to communicate with the prototype testbed and showed that the algorithm successfully predicted the next activities.
机译:智能家庭居民反复执行独特的模式或任务序列。因此,需要一种机器学习方法来构建家用电器的智能网络,并且算法应该快速响应执行决定。本研究提出了一种基于决策树的机器学习方法,用于预测使用诸如状态,位置和时间的不同设备的活动。采用噪声滤波器去除不需要的数据并生成任务序列,并且利用家用电器的双状态属性来从序列中提取剧集。采取增量决策树方法来减少执行时间。使用来自Mavlab的众所周知的智能主页数据集进行了该算法。实验结果表明,该算法成功提取了689个预测及其位置,精度为90%,总执行时间为94秒,比现有方法小于现有方法。使用Raspberry PI 2 B设计了硬件原型,以验证所提出的预测系统。 Raspberry PI 2 B的通用输入输出(GPIO)界面用于与原型测试平板进行通信,并显示该算法成功预测了下一个活动。

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