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Outlier detection by using fault detection and isolation techniques in geodetic networks

机译:大地测量网络中使用故障检测和隔离技术进行异常值检测

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摘要

Fault detection and isolation (FDI) techniques, which are called standard parity space approach (SPSA) and optimal parity vector approach (OPVA), have been presented in literature extensively for engineering sensor systems or sensor networks. This paper demonstrates the abilities of these approaches to detect and isolate outliers in geodetic networks. The ability to detect and isolate outliers has been measured by computing the mean success rate (MSR) for some given probability of significance levels. These approaches have been applied to a levelling network and a Global Navigation Satellite System (GNSS) network. Different matrix decomposition techniques have been used as an alternative way to the Potter algorithm, which is used in SPSA and OPVA. It has been proven that the abilities of FDI techniques, i.e. the MSRs of OPVA, increase with regard to the ones of SPSA in the levelling network and the GNSS network especially if the significance level a is chosen as 0.001 by using Monte-Carlo simulation.
机译:故障检测和隔离(FDI)技术被称为标准奇偶空间方法(SPSA)和最佳奇偶矢量方法(OPVA),在文献中已广泛用于工程传感器系统或传感器网络。本文演示了这些方法检测和隔离大地测量网络中异常值的能力。通过计算某些给定的显着性概率的平均成功率(MSR),可以检测和检测离群值的能力。这些方法已应用于水准测量网络和全球导航卫星系统(GNSS)网络。已将不同的矩阵分解技术用作波特算法的替代方法,该算法用于SPSA和OPVA。业已证明,相对于水准网和GNSS网络中的SPSA,FDI技术(即OPVA的MSR)的能力会增强,特别是如果通过蒙特卡洛模拟将显着性水平a选择为0.001时。

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