A Survey of the Performance-Limiting Factors of a 2-Dimensional RSS Fingerprinting-Based Indoor Wireless Localization System

被引:26
作者
Yaro, Abdulmalik Shehu [1 ,2 ]
Maly, Filip [1 ]
Prazak, Pavel [1 ]
机构
[1] Univ Hradec Kralove, Fac Informat & Management, Dept Informat & Quantitat Methods, Hradec Kralove 50003, Czech Republic
[2] Ahmadu Bello Univ, Dept Elect & Telecommun Engn, Zaria 810106, Nigeria
关键词
indoor localization; RSS; fingerprinting; ML algorithm; POSITIONING SYSTEM; ALGORITHM; CNN;
D O I
10.3390/s23052545
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
A receive signal strength (RSS) fingerprinting-based indoor wireless localization system (I-WLS) uses a localization machine learning (ML) algorithm to estimate the location of an indoor user using RSS measurements as the position-dependent signal parameter (PDSP). There are two stages in the system's localization process: the offline phase and the online phase. The offline phase starts with the collection and generation of RSS measurement vectors from radio frequency (RF) signals received at fixed reference locations, followed by the construction of an RSS radio map. In the online phase, the instantaneous location of an indoor user is found by searching the RSS-based radio map for a reference location whose RSS measurement vector corresponds to the user's instantaneously acquired RSS measurements. The performance of the system depends on a number of factors that are present in both the online and offline stages of the localization process. This survey identifies these factors and examines how they impact the overall performance of the 2-dimensional (2-D) RSS fingerprinting-based I-WLS. The effects of these factors are discussed, as well as previous researchers' suggestions for minimizing or mitigating them and future research trends in RSS fingerprinting-based I-WLS.
引用
收藏
页数:26
相关论文
共 97 条
[1]  
Abubakarsidiq M.R., 2023, IEEE DATAPORT
[2]  
al Mamun M.A., 2021, 2021 IEEE INT S INER, P1
[3]   Improved Gaussian mixture modeling for accurate Wi-Fi based indoor localization systems [J].
Alfakih, Marwan ;
Keche, Mokhtar ;
Benoudnine, Hadjira ;
Meche, Abdelkrim .
PHYSICAL COMMUNICATION, 2020, 43
[4]  
Alfano M., 2015, P 2015 3 INT C CONTR, P1, DOI DOI 10.1109/CEIT.2015.7233072
[5]   Deep learning methods for fingerprint-based indoor positioning: a review [J].
Alhomayani, Fahad ;
Mahoor, Mohammad H. .
JOURNAL OF LOCATION BASED SERVICES, 2020, 14 (03) :129-200
[6]   EA-CNN: A smart indoor 3D positioning scheme based on Wi-Fi fingerprinting and deep learning [J].
Alitaleshi, Atefe ;
Jazayeriy, Hamid ;
Kazemitabar, Javad .
ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2023, 117
[7]  
Alsadik B, 2020, Surveying and Geospatial Engineering Journal, V1, P01, DOI [10.38094/jastt204117, 10.38094/sgej1027, 10.38094/sgej112, DOI 10.38094/SGEJ1027, 10.38094/sgej1027, DOI 10.38094/JASTT204117]
[8]   Performance analysis of fingerprinting indoor positioning methods with BLE [J].
Aranda, Fernando J. ;
Parralejo, Felipe ;
Alvarez, Fernando J. ;
Paredes, Jose A. .
EXPERT SYSTEMS WITH APPLICATIONS, 2022, 202
[9]  
Arora S, 2009, COMPUTATIONAL COMPLEXITY: A MODERN APPROACH, P1, DOI 10.1017/CBO9780511804090
[10]   Indoor Positioning System Using Synthetic Training and Data Fusion [J].
Assayag, Yuri ;
Oliveira, Horacio ;
Souto, Eduardo ;
Barreto, Raimundo ;
Pazzi, Richard .
IEEE ACCESS, 2021, 9 :115687-115699