Distance Measurement Model Based on RSSI in WSN

  • Xu J
  • Liu W
  • Lang F
  • et al.
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Abstract

The relationship between RSSI (Received Signal Strength Indication) values and distance is the foundation and the key of ranging and positioning technologies in wireless sensor networks. Log-normal shadowing model (LNSM), as a more general signal propagation model, can better describe the relationship between the RSSI value and distance, but the parameter of variance in LNSM is depended on experiences without self-adaptability. In this paper, it is found that the variance of RSSI value changes along with distance regu- larly by analyzing a large number of experimental data. Based on the result of analysis, we proposed the relationship function of the variance of RSSI and distance, and established the log-normal shadowing model with dynamic variance (LNSM-DV). At the same time, the method of least squares(LS) was selected to es- timate the coefficients in that model, thus LNSM-DV might be adjusted dynamically according to the change of environment and be self-adaptable. The experimental results show that LNSM-DV can further reduce er- ror, and have strong self-adaptability to various environments compared with the LNSM.

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APA

Xu, J., Liu, W., Lang, F., Zhang, Y., & Wang, C. (2010). Distance Measurement Model Based on RSSI in WSN. Wireless Sensor Network, 02(08), 606–611. https://doi.org/10.4236/wsn.2010.28072

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