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LPI radar network optimization based on geometrical measurement fusion

机译:基于几何测量融合的LPI雷达网络优化

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The power optimization problem and target assignment are investigated to improve low probability of interception (LPI) in a distributed radar network system. The target geometrical localization error and probability of detection are considered as QoS metrics of the network. We introduce geometrical fusion gain as a metric to fuse information for measuring target localization by multiple radars. The problem is then considered as an optimization challenge based on measurement error covariance ellipses, which satisfy detection and localization accuracy of the network. The LPI problem can be solved with two different objectives for the optimization as it minimizes the maximum power and cuts down on total power. Due to the combinatorial nonconvex and nonlinear nature of the optimization problems, relaxations are considered to make the problems more tractable. They can be efficiently solved by dividing them into two subproblems. Firstly, there is the power allocation in which a framework is proposed to compute minimum required power for a radar assignment scheme by applying a numerical method. Secondly, there is the radar assignment in which a heuristic assignment algorithm is suggested to acquire sufficient radar-to-target assignment based on calculated power. The simulation results show that the proposed algorithms considerably improve LPI performance while detection probability and target localization error constraints can be satisfied.
机译:研究了功率优化问题和目标分配,以提高分布式雷达网络系统中的低拦截概率(LPI)。目标几何定位误差和检测概率被视为网络的QoS度量。我们引入几何融合增益作为度量标准,以融合信息以测量多个雷达的目标定位。然后,该问题被视为基于测量误差协方差椭圆的优化挑战,该椭圆满足网络的检测和定位精度。 LPI问题可以通过两个不同的优化目标来解决,因为它可以最大程度地减少最大功率并减少总功率。由于优化问题的组合非凸性和非线性性质,可以考虑使用松弛来使问题更易于处理。通过将它们分为两个子问题,可以有效地解决它们。首先,在功率分配中,提出了一种框架,该框架通过应用数值方法来计算雷达分配方案的最小所需功率。其次,在雷达分配中,建议使用启发式分配算法基于计算出的功率来获取足够的雷达到目标分配。仿真结果表明,该算法在满足检测概率和目标定位误差约束的同时,极大地提高了LPI性能。

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