An Efficient Preference-Based Sensor Selection Method In Internet Of Things

Zengwei Zheng, Yanyun Tao,Yuanyi Chen, Fengle Zhu,Dan Chen

IEEE ACCESS(2019)

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摘要
While it is well understood that the Internet of things (IoT) can facilitate numerous applications (e.g., environmental supervision, forest fire prevention and Intelligent farming), it also brings a significant challenge for efficiently selecting sensors that meet users' preference and specific requirement from millions of heterogeneous sensors. In this paper, we propose an improved fast nondominated sorting algorithm for efficiently preference-based sensor selection in IoT. Specifically, this proposed method mainly includes three parts: 1) Offline constructing R-tree to search sensor resources and narrowing the size of dataset according to user's preference; 2) Using an improved fast nondominated sorting approach to get nondominated front; 3) Employing TOPSIS to characterize every sensor option of the nondominated front. In order to illustrate the usability of the model, we conduct experiments on several simulation datasets. Experimental results show that this method outperforms several baselines in terms of both response time and accuracy.
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关键词
Multi-criteria decision,R-tree structure,sensor selection,Internet of Things,the fast nondominated sorting algorithm
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