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Lateral Cross Localization Algorithm Using Orientation Angle for Improved Target Estimation in Near-Field Environments

机译:基于方位角的横向交叉定位算法在近场环境中的改进目标估计

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Passive positioning systems with a small aperture array exhibit poor accuracy of target estimation under strong interference in near-field environments. To improve this accuracy, we propose a novel cross localization algorithm for direction-finding using the orientation angle. Improved geometric and numerical target-positioning models are constructed after analyzing the mechanism of the conventional positioning algorithm. The target prediction equation is then derived using the constructed models, and the equation for nonlinear estimation is linearized using the Taylor series. An unbiased estimation of the target is obtained by optimizing the control of the iteration process, thus achieving an accurate positioning of the target. The performance of the proposed algorithm was evaluated in terms of its effectiveness and positioning accuracy under varying signal-to-noise conditions and orientation angle-measurement errors. Simulation results show that the proposed algorithm is capable of positioning the target effectively, and offers better positioning accuracy than traditional algorithms under the conditions of large orientation angle measurement errors or high-level background noise.
机译:具有小孔径阵列的无源定位系统在近场环境中受到强烈干扰时,目标估计的准确性较差。为了提高这种精度,我们提出了一种新颖的交叉定位算法,用于使用方向角进行测向。通过分析常规定位算法的机理,构造出改进的几何和数值目标定位模型。然后使用构建的模型导出目标预测方程,并使用泰勒级数将非线性估计方程线性化。通过优化迭代过程的控制可以获得目标的无偏估计,从而实现目标的精确定位。根据算法的有效性和在变化的信噪比条件下和定向角度测量误差下的定位精度,评估了该算法的性能。仿真结果表明,该算法能够有效地定位目标,并且在大角度定位误差或高背景噪声的情况下,比传统算法具有更好的定位精度。

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