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A Robust Geomagnetic Matching Algorithm Based on L1 Norm

机译:一种基于L1标准的强大地磁匹配算法

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摘要

The outliers in geomagnetic measured data can seriously impact the geomagnetic matching results and greatly affect the geomagnetic matching efficiency. A geomagnetic matching algorithm which has anti-outlier ability and can adjust the displacement, heading and zoom errors is investigated in this paper. Firstly, L1 norm is introduced for robust estimation. Secondly, by combining the affine transformation, the correlate criterion and the Taylor series expansion for geomagnetic information, a mathematical expression of the displacement, heading and zoom errors is obtained. Thirdly, according to L1 norm weight function and the mathematical expression, the robust target function is acquired. Then the geomagnetic matching problem is converted to the solutions of nonlinear equations to minimize the function. Finally, Broyden iteration is applied to implement the novel algorithm. Simulation results show that the matching error of the novel algorithm is decreased to 31.08% to the conventional iterative contour matching algorithm when the outlier is 31nT. Meanwhile, the position error of the novel algorithm is 0.0195° while the conventional iterative contour matching algorithm fails to match when the outlier is 310nT.
机译:地磁测量数据中的异常值可能会严重影响地质匹配结果,并大大影响地磁匹配效率。本文研究了具有反异常能力,可以调节位移,标题和变焦误差的地磁匹配算法。首先,引入L1规范以获得鲁棒估计。其次,通过组合仿射转换,获得用于地磁信息的相关标准和泰勒序列扩展,获得了位移的数学表达,标题和缩放误差。第三,根据L1规范权重函数和数学表达式,获取稳健的目标函数。然后将地磁匹配问题转换为非线性方程的解,以最小化功能。最后,应用了泡沫迭代以实现新颖算法。仿真结果表明,当异常值为31NT时,新颖算法的匹配误差降至传统的迭代轮廓匹配算法到31.08%。同时,新算法的位置误差为0.0195°,而传统的迭代轮廓匹配算法在异常值为310nt时无法匹配。

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