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Accurate Distance Estimation Using Fuzzy based combined RSSI/LQI Values in an Indoor Scenario: Experimental Verification

机译:室内场景中基于模糊的RSSI / LQI组合值的精确距离估计:实验验证

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The received signal strength indicator (RSSI) and the link quality indicator (LQI) are metrics that are commonlyavailable in commercial off-the-shelf (COTS) sensor hardware. The former has been widely regarded as the mainsource for distance estimation and node localization. However, experimentally RSSI has been shown to behave inan inconsistent manner, even in ideal scenarios, and serve at best as bounds for distances. The latter is effectively ameasure of chip error rate, and can be used to identify higher quality transmissions, and the combination RSSI/LQIcan be expected to make more precise estimates with the tradeoff of increased delay and estimation cost. In thispaper, we describe our distance estimation system that uses these two metrics and test our hypothesis purelythrough experimental measurements using sensor nodes. Results indicate that such a combination of metrics canbe used to provide a tighter bound on the range of estimated distances. We then quantify the improvement indistance estimation by relying on these two metrics. Through a unique classification using fuzzy logic and TBM,we developed an algorithm that is capable of precise distance estimation within the range of 100cm to 400cm, onat least 80% of the times while reaching accuracy as high as 100%.
机译:接收信号强度指示器(RSSI)和链路质量指示器(LQI)是在商用现货(COTS)传感器硬件中普遍可用的度量。前者已被广泛视为距离估计和节点定位的主要来源。但是,实验证明RSSI即使在理想情况下也表现出不一致的方式,并且充其量只能作为距离的界限。后者有效地是码片错误率的一种度量,并且可以用于识别更高质量的传输,并且可以期望结合RSSI / LQI进行更精确的估计,但要权衡增加延迟和估计成本。在本文中,我们描述了使用这两个指标的距离估算系统,并仅通过使用传感器节点的实验测量来检验假设。结果表明,度量的这种组合可用于在估计距离的范围上提供更严格的界限。然后,我们依靠这两个指标来量化改善距离估计。通过使用模糊逻辑和TBM进行独特的分类,我们开发了一种算法,该算法能够至少在80%的时间内在100cm至400cm的范围内进行精确的距离估算,而精度高达100%。

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