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Classified Particle Swarm Optimization Based Algorithm for Cooperative Localization

机译:基于分类粒子群算法的协同定位算法

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High-precision wireless localization has attractive application prospects. Cooperative localization is an effective tool to improve localization accuracy. However, compared with non-cooperative localization, in cooperative localization networks, large-scale neighboring links and nonlinear measurement functions cause the associated objective function to be non-convex. It is difficult to obtain global optimum using classical particle swarm optimization (PSO) algorithm or analytical methods. In order to solve this problem, a classified particle swarm optimization (CPSO) algorithm is proposed in this paper. For classical PSO, all search particles have the same inertial weight and learning factor. Unlike classical PSO, the proposed CPSO algorithm classified different search particles based on particle cost value and set different inertial weights and learning factors for search particles. Meanwhile, considering the unavoidable reference node location error, localization result could be achieved by calculating the weighted average of close-range particle locations. Simulation results prove that the CPSO algorithm improves positioning accuracy by 25.3% compared with classical PSO algorithm.
机译:高精度无线定位具有诱人的应用前景。合作定位是提高定位精度的有效工具。但是,与非合作定位相比,在合作定位网络中,大规模的相邻链接和非线性测量函数会导致相关的目标函数是非凸的。使用经典粒子群优化(PSO)算法或分析方法很难获得全局最优。为了解决这个问题,本文提出了一种分类粒子群优化算法(CPSO)。对于经典PSO,所有搜索粒子都具有相同的惯性权重和学习因子。与经典PSO不同,提出的CPSO算法根据粒子成本值对不同的搜索粒子进行分类,并为搜索粒子设置不同的惯性权重和学习因子。同时,考虑到不可避免的参考节点位置误差,可以通过计算近距离粒子位置的加权平均值来获得定位结果。仿真结果表明,与经典的PSO算法相比,CPSO算法的定位精度提高了25.3%。

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