Indoor Localization Scheme in Wireless Sensor Networks Using Spatial Information

Author(s):  
Wenming Shi ◽  
Chuanhe Huang ◽  
Mingkai Shao ◽  
Yong Cheng ◽  
Zhe Chen
Author(s):  
CHI-LU YANG ◽  
YEIM-KUAN CHANG ◽  
YU-TSO CHEN ◽  
CHIH-PING CHU ◽  
CHI-CHANG CHEN

Service systems used for various applications in home automation and security require estimating the locations precisely using certain sensors. Serving a mobile user automatically by sensing his/her locations in an indoor environment is considered as a challenge. However, indoor localization cannot be carried out effectively using the Global Positioning System (GPS). In recent years, the use of Wireless Sensor Networks (WSNs) in locating a mobile object in an indoor environment has become popular. Some physical features have also been discussed to solve localization in WSNs. In this paper, we inquire into received signal strength indication (RSSI)-based solutions and propose a new localization scheme called the closer tracking algorithm (CTA) for indoor localization. Under the proposed CTA, a mechanism on mode-change is designed to switch automatically between the optimal approximately closer approach (ACA) and the real-time tracking (RTT) method according to pre-tuned thresholds. Furthermore, we design a mechanism to move reference nodes dynamically to reduce the uncovered area of the ACA for increasing the estimation accuracy. We evaluate the proposed CTA using ZigBee CC2431 modules. The experimental results show that the proposed CTA can determine the position accurately with an error distance less than 0.9 m. At the same time, the CTA scheme has at least 87% precision when the distance is less than 0.9 m. The proposed CTA can select an adaptive mode properly to improve the localization accuracy with high confidence. Moreover, the experimental results also show that the accuracy can be improved by the deployment and movement of reference nodes.


IEEE Access ◽  
2018 ◽  
Vol 6 ◽  
pp. 27629-27636 ◽  
Author(s):  
Yali Yuan ◽  
Liuwei Huo ◽  
Zhixiao Wang ◽  
Dieter Hogrefe

Sign in / Sign up

Export Citation Format

Share Document