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Outlier Identification Based on Clustering for Joint Positioning Systems

机译:基于聚类的联合定位系统聚类的异常识别

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Working in the complex or even hostile underwater circumstances, robustness and stability are of great significance for underwater positioning systems. This paper presents a method to identify outliers in joint underwater positioning based on clustering. Firstly, using the distance and direction of arrival (DOA) measurements of the system, preliminary estimates of the target position are calculated. Secondly, clustering algorithm is employed to analyze the consistency of preliminary estimates. Finally, on the basis that outliers and other measurements are incompatible, outliers can be identified through estimating state variables, and then elimination of the localization deviation caused by the outliers can be achieved. Simulations are conducted to verify effectiveness of the method. Results show that compared with the current distance-based robust localization methods, the proposed method fully utilizes the distance measurements and DOA measurements, and the outlier identification performance is more satisfactory.
机译:在复杂甚至敌对的水下情况下工作,鲁棒性和稳定性对于水下定位系统具有重要意义。本文介绍了一种识别基于聚类的联合水下定位中的异常值的方法。首先,使用系统的到达距离和方向(DOA)测量,计算目标位置的初步估计。其次,采用聚类算法来分析初步估计的一致性。最后,在不兼容的异常值和其他测量的基础上,可以通过估计状态变量来识别异常值,然后可以实现由异常值引起的本地化偏差。进行模拟以验证该方法的有效性。结果表明,与基于电流距离的稳健本地化方法相比,该方法充分利用距离测量和DOA测量,并且异常识别性能更令人满意。

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