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Error data analytics on RSS range-based localization

机译:基于RSS范围的定位的错误数据分析

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The quality of measurement data is critical to the accuracy of both outdoor and indoor localization methods. Due to the inevitable measurement error, the analytics on the error data is critical to evaluate localization methods and to find the effective ones. For indoor localization, Received Signal Strength (RSS) is a convenient and low-cost measurement that has been adopted in many localization approaches. However, using RSS data for localization needs to solve a fundamental problem, that is, how accurate are these methods? The reason of the low accuracy of the current RSS-based localization methods is the oversimplified analysis on RSS measurement data. In this proposed work, we adopt a generalized measurement model to find optimal estimators whose estimated error is equal to the Cramér-Rao Lower Bound (CRLB). Through mathematical techniques, the key factors that affect the accuracy of RSS-based localization methods are revealed, and the analytics expression that discloses the proportional relationship between the localization accuracy and these factors is derived. The significance of our discovery has two folds: First, we present a general expression for localization error data analytics, which can explain and predict the accuracy of range-based localization algorithms; second, the further study on the general analytics expression and its minimum can be used to optimize current localization algorithms.
机译:测量数据的质量对于户外和室内定位方法的准确性至关重要。由于不可避免的测量误差,错误数据上的分析对于评估本地化方法并找到有效的分析至关重要。对于室内定位,接收的信号强度(RSS)是一种方便而低成本的测量,以许多本地化方法采用。但是,使用RSS数据进行本地化需要解决一个基本问题,即这些方法的准确性如何?基于RSS的本地化方法的低精度的原因是对RSS测量数据的超薄分析。在这一拟议的工作中,我们采用广义测量模型来查找估计误差等于Cramér-rao下限(CRLB)的最佳估计。通过数学技术,揭示了影响基于RSS的定位方法的准确性的关键因素,并且衍生出了本地化精度与这些因素的比例关系的分析表达。我们的发现的重要性有两倍:首先,我们向本地化误差数据分析提供了一般表达式,可以解释和预测基于范围的定位算法的准确性;其次,对一般分析表达的进一步研究及其最低限度可用于优化当前定位算法。

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