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Evaluation of Different Outlier Detection Methods for GPS Networks

机译:GPS网络不同离群点检测方法的评估

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摘要

GPS (Global Positioning System) devices can be used in many applications which require accurate point positioning in geosciences. Accuracy of GPS decreases due to outliers resulted from the errors inherent in GPS observations. Several approaches have been developed to detect outliers in geodetic observations. It is important to determine which method is most effective at distinguishing outliers from normal observations. This paper investigates the behavior of conventional statistical test methods (Data Snooping (DS), Tau and t tests), some robust methods (Andrews's M-Estimation, Huber's M-Estimation, Tukey's M-Estimation, Danish Method, Yang-I M-Estimation, Yang-II M-Estimation, and fuzzy logic method in detection of outliers for three GPS networks having different characteristics. Test results are evaluated and the performances of different methods are presented quantitatively.
机译:GPS(全球定位系统)设备可用于许多需要在地球科学中进行精确点定位的应用中。由于GPS观测固有的误差导致异常值,导致GPS精度下降。已经开发了几种方法来检测大地观测中的异常值。确定哪种方法最能有效区分异常值和正常观测值,这一点很重要。本文研究了常规统计测试方法(数据侦听(DS),Tau和t检验)的行为,一些鲁棒的方法(安德鲁斯(Andrews)的M-估计,胡贝尔(Huber)的M-估计,图基(Tukey)的M-估计,丹麦语的方法,Yang-I的M-估计,Yang-II M估计和模糊逻辑方法在三个具有不同特征的GPS网络离群值的检测中,对测试结果进行了评估,并定量介绍了不同方法的性能。

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