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Incremental Localization Algorithm Based on Regularized Iteratively Reweighted Least Square

机译:基于正则化迭代重新超强的增量定位算法

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Considering that incremental localization is influenced by the heteroscedasticity problem caused by cumulative errors and the collinearity problem among nodes, this paper has proposed an incremental localization algorithm with consideration to cumulative error and collinearity problem. Using iteratively reweighted method, the algorithm reduces the influences of error accumulation and avoids collinearity problem between nodes with a regularized method. Simulation experiment results show that compared with the previous incremental localization algorithms the proposed algorithm can not only solve the problem of heteroscedasticity, but also obtain a localization solution with high accuracy. In addition, the method also takes into account the influence of collinearity on localization calculation in the process of locating, thus the method is suitable for different monitoring areas and has high adaptability.
机译:考虑到增量定位受到累积误差引起的异源性问题和节点之间的相机性问题影响的影响,这篇论文提出了一种增量定位算法,考虑到累积误差和共同性问题。使用迭代重新重量的方法,该算法减少了误差累积的影响,并避免了具有正则化方法的节点之间的共线问题。仿真实验结果表明,与先前的增量定位算法相比,所提出的算法不仅可以解决异源性的问题,还可以高精度地获得本地化解决方案。此外,该方法还考虑了相连性对定位过程中的对本地化计算的影响,因此该方法适用于不同的监测区域并具有高适应性。

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