A Wi-Fi-Based Wireless Indoor Position Sensing System with Multipath Interference Mitigation
Abstract
:1. Introduction
- The mechanism of the position sensing accuracy loss due to the multipath interference effect is analyzed theoretically, and the multipath strength indicator is defined to measure the interference quantitatively.
- A novel RSSI-assisted TDoA method is proposed to mitigate the impact of the multipath interference. Especially, the proposed method is capable of handling the circumstances with small propagation delay difference.
- The prototype of an RSSI-assisted TDoA position sensing (RTPS) system has been implemented in a software defined radio (SDR) platform. The prototype system shows advantages of high accuracy, high robustness, and low computational complexity compared to other methods in the literature.
2. RSSI-Assisted TDoA Method with Multipath Interference Mitigation
2.1. Conventional TDoA Method for Position Sensing
2.2. Proposed RSSI-Assisted TDoA Method
- If , it is surmised that both and are negative, and the compensation signal and will be found and added to and , respectively.
- If , it is surmised that either or is negative, and the compensation will be applied to the one selected from or which has larger .
- If and there is large difference between and (specifically two conditions: i. the polarity of is different from that of ; ii. and have the same polarities, but / is less than a threshold, i.e., 0.1), the compensation will be applied to the one selected from or which has larger .
- No compensation will be applied for all the other conditions.
3. Prototype System for Method Validation
3.1. Prototype System Hardware and Firmware
3.2. Signal Processing Flow for Position Sensing
4. Simulation and Experimental Results
4.1. Simulation Results
4.2. 1D Position Sensing Experiment
4.3. 2D Position Sensing Experiment
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Xie, T.; Jiang, H.; Zhao, X.; Zhang, C. A Wi-Fi-Based Wireless Indoor Position Sensing System with Multipath Interference Mitigation. Sensors 2019, 19, 3983. https://doi.org/10.3390/s19183983
Xie T, Jiang H, Zhao X, Zhang C. A Wi-Fi-Based Wireless Indoor Position Sensing System with Multipath Interference Mitigation. Sensors. 2019; 19(18):3983. https://doi.org/10.3390/s19183983
Chicago/Turabian StyleXie, Tuo, Hanjun Jiang, Xijin Zhao, and Chun Zhang. 2019. "A Wi-Fi-Based Wireless Indoor Position Sensing System with Multipath Interference Mitigation" Sensors 19, no. 18: 3983. https://doi.org/10.3390/s19183983
APA StyleXie, T., Jiang, H., Zhao, X., & Zhang, C. (2019). A Wi-Fi-Based Wireless Indoor Position Sensing System with Multipath Interference Mitigation. Sensors, 19(18), 3983. https://doi.org/10.3390/s19183983