Resolving range ambiguity in long baseline synchronous acoustic positioning

Wang Yan, Li Qing, Fu Jin, Liang Guolong
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引用次数: 1

Abstract

For locating underwater targets moving in a large range, long baseline (LBL) synchronous acoustic positioning is always employed. Aiming at suppressing range ambiguity and improving performance of the LBL system, a novel range ambiguity resolution technique is proposed which is based on parameter fusion and optimization (RAR-PFO). From the perspective of parameter estimation, the basic idea was to build an optimization model with distance and direction parameters under maximum likelihood criterion. Furthermore, the nonlinear multimodal optimization problem was solved through differential evolution (DE). The constraint function limits the area where the target is located and suppresses premature convergence of DE. Performance of the proposed approach is evaluated using simulations, and compared with some widely applied methods and the Cramer-Rao bound. Simulation results demonstrated the effectiveness and robustness of the proposed method.
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解决长基线同步声学定位中的测距模糊问题
在定位大范围移动的水下目标时,总是采用长基线(LBL)同步声学定位。为了抑制测距模糊并提高 LBL 系统的性能,提出了一种基于参数融合和优化(RAR-PFO)的新型测距模糊解决技术。从参数估计的角度来看,其基本思想是在最大似然准则下建立一个包含距离和方向参数的优化模型。此外,还通过微分进化(DE)解决了非线性多模态优化问题。约束函数限制了目标所在的区域,并抑制了微分演化的过早收敛。通过仿真评估了所提方法的性能,并与一些广泛应用的方法和 Cramer-Rao 约束进行了比较。仿真结果证明了所提方法的有效性和稳健性。
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