Review of RSSI-based Positioning Algorithm and Accuracy

Authors

  • Tianhao Wu

DOI:

https://doi.org/10.54097/fcis.v2i1.2485

Keywords:

RSSI, Positioning; Accuracy

Abstract

The demand for high-precision, low-cost, and widely used wireless sensor network positioning technology continues to increase, and the algorithms for positioning using wireless sensor networks have been suffering from the problem of insufficient accuracy. This paper introduces and analyzes the steps and principles of the RSSI algorithm, which has low hardware requirements and can achieve high accuracy positioning, and describes the mathematical model and related algorithms used. Finally, we conclude and provide an outlook on the future and development of RSSI.

Downloads

Download data is not yet available.

References

Ou, S. Q. & Chen, J. (2013). The Research Overview and Development Prospects of Wireless Sensor Network. Computer Knowledge and Technology (33),7418-7419.

Cao, A. L., Zhang P. & Liu, T. (2017). Review on Localization Technology of Wireless Sensor Networks. Journal of Yichun College (06),15-22

Tang, M. S. (2018). Overview of wireless sensor network application technologie. Science & Technology Information (36),42-43.

Liu, B. N. (2018). Indoor Space Location Method Based on Zigbee Technology, Unpublished master’s dissertation, Beijing Institute of Technology, Beijing.

Zhang, B. S., Tong, Z. Y., Tang, S. F., Tong, M. M. & Xu, C. L. (2018). Overview of RSSI based indoor positioning technologies. Computer Era (07),1-4+8.

Han, L. (2021). Research on positioning technology based on joint filter fusion prediction, Unpublished master’s dissertation, Chongqing University of Posts and Telecommunications, Chongqing.

Lu, Z. Z., Lu, X. P., Ma, L. T. & Zhang, H. (2019). Gaussian filter RSSI ranging algorithm based on ROF model. Journal of Navigation and Positioning (01),54-58.

Feng, F., Wu, C, & Chen, J. H. (2020). RSSI-based Indoor Localization Algorithm Combining With Particle Filter and Kalman Filter. Technology of IoT & AI (05),24-29.

Wang, T. T. (2021) Research on RSSI Indoor Localization Algorithm Based on Set-membership Filtering, Unpublished master’s dissertation, Shanxi University, Taiyuan, Shanxi.

Loganathan, A & Ahmad, N. S. (2020). Indoor Localization of a Mobile Object via Zigbee-Based RSSI. International Journal of Electrical and Electronic Engineering & Telecommunications(2), 100-104.

Wu, H., Liu, Z. & Hu, J. (2021) Multi-objective optimization of RSSI sensor deployment considering obstacles for indoor positioning. Geomatics and Information Science of Wuhan University, 1-12.

Chen, Y. X., Liu, R. R, Chen, Y. Q, Wang, S. Q. & Jiang, X. L. (2017). A context-adaptive segmentation heterogeneous RSSI fitting positioning method. Computer Engineering & Science (07),1288-1294.

Jiang, W. X., Liu, D., Zhao, S. R., Chen, B. Z. & Wei, S. F. (2022). Optimization of Centroid Localization Algorithm for Wireless Sensor Networks Based on RSSI. Computer Systems & Applications (06),294-299.

Nie, D. W., Zhu, H., Wu, F. & Han, X. F. (2022). Weighted localization method based on RSSI probability distribution with Bayesian estimation. GNSS World Of China (02),52-59.

Zhang, L. P., Yang, Z. Y., Zhang, S. L. & Yang, H. H.(2019).Three-Dimensional Localization Algorithm of WSN Nodes Based on RSSI-TOA and Single Mobile Anchor Node. Journal of Electrical and Computer Engineering. Article ID 4043106.

Wang, J. C. (2018). Research on Fusion Localization Algorithm Based on AOA and RSSI. Unpublished master’s dissertation, Chongqing University of Posts and Telecommunications, Chongqing.

Yao, J., Zhen, Z. Y. & Ma, Y. J. (2021) RSSI ranging optimization algorithm based on BP neural network. Chinese Journal of Radio Science (04), 663-669.

Lou, X. Y. (2019). Research on RSSI Indoor Environment Perception and Location Technology Based on Machine Learning. Unpublished master’s dissertation, Xidian University, Xi’an, Shaanxi.

Jiang, W. B. & Huang, C. H. (2021). Indoor localization algorithm based on image processing and RSSI signal. Transducer and Microsystem Technologies (07),126-129+133.

Irsan Taufik Ali,Abdul Muis & Riri Fitri Sari.(2021).A Deep Learning Model Implementation Based on RSSI Fingerprinting for LORA-Based Indoor Localization. EUREKA: Physics and Engineering (01), 40-59.

Downloads

Published

23-11-2022

Issue

Section

Articles

How to Cite

Wu, T. (2022). Review of RSSI-based Positioning Algorithm and Accuracy. Frontiers in Computing and Intelligent Systems, 2(1), 10-12. https://doi.org/10.54097/fcis.v2i1.2485