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Distance Measurement Model Based on RSSI in WSN

机译:WSN中基于RSSI的测距模型

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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.
机译:RSSI(接收信号强度指示)值与距离之间的关系是无线传感器网络中测距和定位技术的基础和关键。对数正态阴影模型(LNSM)作为更通用的信号传播模型,可以更好地描述RSSI值与距离之间的关系,但是LNSM中的方差参数取决于经验,而没有自适应性。通过分析大量实验数据,发现RSSI值的方差随距离而变化。在分析结果的基础上,提出了RSSI方差与距离的关系函数,建立了具有动态方差的对数正态阴影模型(LNSM-DV)。同时,选择最小二乘法(LS)估计该模型中的系数,因此LNSM-DV可能会根据环境的变化而动态调整并且是自适应的。实验结果表明,与LNSM相比,LNSM-DV可以进一步减少错误,并且对各种环境具有很强的自适应性。

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