A novel indoor localization system using machine learning based on bluetooth low energy with cloud computing

被引:0
作者
Quanyi Hu
Feng Wu
Raymond K. Wong
Richard C. Millham
Jinan Fiaidhi
机构
[1] Chinese Academic of Sciences,DACC Laboratory, Zhuhai Institute of Advanced Technology
[2] Chinese Academic of Sciences,Zhuhai Institute of Advanced Technology
[3] University of New South Wales,School of Engineering
[4] Durban University of Technology,ICT & Society Group
[5] Lakehead University,e
来源
Computing | 2023年 / 105卷
关键词
Indoor localization system; Bluetooth low energy; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we propose a novel indoor localization system in a multi-indoor environment using cloud computing. Prior studies show that there are always concerns about how to avoid signal occlusion and interference in the single indoor environment. However, we find some general rules to support our system being immune to interference generated by occlusion in the multi-indoor environment. A convenient way is measured to deploy Bluetooth low energy devices, which mainly collect large information to assist localization. A neural network-based classification is proposed to improve localization accuracy, compared with several algorithms and their performance comparison is discussed. We also design a distributed data storage structure and establish a platform considering the storage load with Redis. Our real experimental validation shows that our system will meet the four aspects of performance requirements, which are higher accuracy, less power consumption, and increased levels of system magnitude and deployment efficiency.
引用
收藏
页码:689 / 715
页数:26
相关论文
共 48 条
[1]  
Gu Y(2009)A survey of indoor positioning systems for wireless personal networks IEEE Commun Surv Tutor 11 13-32
[2]  
Lo A(2005)Network-based wireless location: challenges faced in developing techniques for accurate wireless location information IEEE Signal Process Mag 22 24-40
[3]  
Niemegeers I(2005)Bayesian indoor positioning systems IEEE INFOCOM 2 1217-1227
[4]  
Sayed AH(2020)Could or could not of Grid-Loc: grid BLE structure for indoor localisation system using machine learning SOCA 14 161-174
[5]  
Tarighat A(2014)Efficient indoor fingerprinting localization technique using regional propagation model IEICE Trans Commun 97 1728-1741
[6]  
Khajehnouri N(2015)Swadloon: direction finding and indoor localization using acoustic signal by shaking smartphones IEEE Trans Mob Comput 14 2145-2157
[7]  
Madigan D(2016)Microlocation for internet-of-things-equipped smart buildings IEEE Internet Things J 3 96-112
[8]  
Einahrawy E(2013)Trilateration based localization algorithm for wireless sensor network International Journal of Science and Modern Engineering 1 21-27
[9]  
Martin R(2008)Localization in wireless sensor networks ACM J Name 5 1-19
[10]  
Ju W-H(2018)Resilient virtual communication networks using multi-commodity flow based local optimal mapping Netw Comput Appl 110 43-51