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Sensor placement optimization for distributed acoustic source localization system using semidefinite programming

机译:基于半定规划的分布式声源定位系统传感器布置优化。

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The sensor-source geometry is one of the key factors affecting the performance of a distributed acoustic source localization system. In this paper, an approximate optimal routing method is proposed by minimizing the determinant of the Cramer Rao Lower Bound (CRLB) for the source location estimate. At first the sensors are equally distributed in the test field, the problem is relaxed to a combinatorial optimization problem, which can be solved by semidefinite programming (SDP) [9]. We sort the sensors by the λ* and then select the highest probability of the occurrence for the globally optimal placement. The simulation compares the performances of the TDOA-based acoustic source localization system by using the different placement schemes obtained from the adaptive genetic algorithm (AGA) and the SDP, respectively. The results show that the localization performance using SDP-based scheme is better than that using AGA-placement scheme when the probability of uncertain source location follows uniform distribution.
机译:传感器源几何形状是影响分布式声源定位系统性能的关键因素之一。在本文中,通过最小化用于源位置估计的Cramer Rao下界(CRLB)的行列式,提出了一种近似的最佳路由方法。首先,传感器均匀分布在测试领域,该问题被简化为组合优化问题,可以通过半定编程(SDP)来解决[9]。我们按λ*对传感器进行排序,然后为全局最佳位置选择出现的最高概率。该仿真通过分别使用从自适应遗传算法(AGA)和SDP获得的不同放置方案,比较了基于TDOA的声源定位系统的性能。结果表明,当不确定的源位置遵循均匀分布的概率时,基于SDP的方案的定位性能要优于基于AGA的方案。

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