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On the Statistical Errors of RADAR Location Sensor Networks with Built-In Wi-Fi Gaussian Linear Fingerprints

机译:具有内置Wi-Fi高斯线性指纹的RADAR位置传感器网络的统计误差

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The expected errors of RADAR sensor networks with linear probabilistic location fingerprints inside buildings with varying Wi-Fi Gaussian strength are discussed. As far as we know, the statistical errors of equal and unequal-weighted RADAR networks have been suggested as a better way to evaluate the behavior of different system parameters and the deployment of reference points (RPs). However, up to now, there is still not enough related work on the relations between the statistical errors, system parameters, number and interval of the RPs, let alone calculating the correlated analytical expressions of concern. Therefore, in response to this compelling problem, under a simple linear distribution model, much attention will be paid to the mathematical relations of the linear expected errors, number of neighbors, number and interval of RPs, parameters in logarithmic attenuation model and variations of radio signal strength (RSS) at the test point (TP) with the purpose of constructing more practical and reliable RADAR location sensor networks (RLSNs) and also guaranteeing the accuracy requirements for the location based services in future ubiquitous context-awareness environments. Moreover, the numerical results and some real experimental evaluations of the error theories addressed in this paper will also be presented for our future extended analysis.
机译:讨论了具有可变Wi-Fi高斯强度的建筑物内具有线性概率位置指纹的RADAR传感器网络的预期误差。据我们所知,已建议使用相等和不等权的RADAR网络的统计误差作为评估不同系统参数的行为和参考点(RP)部署的更好方法。但是,到目前为止,关于统计误差,系统参数,RP的数量和间隔之间的关系仍然没有足够的相关工作,更不用说计算相关的分析表达式了。因此,针对这个令人信服的问题,在简单的线性分布模型下,将非常关注线性预期误差,邻居数,RP的数目和间隔,对数衰减模型中的参数以及无线电变化的数学关系。测试点(TP)的信号强度(RSS),目的是构建更实用,更可靠的RADAR位置传感器网络(RLSN),并保证将来在无处不在的上下文感知环境中基于位置的服务的精度要求。此外,本文提出的误差理论的数值结果和一些实际的实验评估也将提供给我们将来的扩展分析。

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