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Joint Adaptive Sampling Interval and Power Allocation for Maneuvering Target Tracking in a Multiple Opportunistic Array Radar System

机译:联合自适应采样间隔和功率分配用于多机会阵列雷达系统中的机动目标跟踪。

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摘要

In this paper, a joint adaptive sampling interval and power allocation (JASIPA) scheme based on chance-constraint programming (CCP) is proposed for maneuvering target tracking (MTT) in a multiple opportunistic array radar (OAR) system. In order to conveniently predict the maneuvering target state of the next sampling instant, the best-fitting Gaussian (BFG) approximation is introduced and used to replace the multimodal prior target probability density function (PDF) at each time step. Since the mean and covariance of the BFG approximation can be computed by a recursive formula, we can utilize an existing Riccati-like recursion to accomplish effective resource allocation. The prior Cramér-Rao lower boundary (prior CRLB-like) is compared with the upper boundary of the desired tracking error range to determine the adaptive sampling interval, and the Bayesian CRLB-like (BCRLB-like) gives a criterion used for measuring power allocation. In addition, considering the randomness of target radar cross section (RCS), we adopt the CCP to package the deterministic resource management model, which minimizes the total transmitted power by effective resource allocation. Lastly, the stochastic simulation is embedded into a genetic algorithm (GA) to produce a hybrid intelligent optimization algorithm (HIOA) to solve the CCP optimization problem. Simulation results show that the global performance of the radar system can be improved effectively by the resource allocation scheme.
机译:针对多机会阵列雷达(OAR)系统中的机动目标跟踪(MTT)问题,提出了一种基于机会约束规划(CCP)的联合自适应采样间隔与功率分配(JASIPA)方案。为了方便地预测下一个采样时刻的机动目标状态,引入了最佳拟合高斯(BFG)近似值,并在每个时间步用于替换多峰先验目标概率密度函数(PDF)。由于BFG近似的均值和协方差可以通过递归公式计算,因此我们可以利用现有的类似Riccati的递归来完成有效的资源分配。将先前的Cramér-Rao下边界(类似于CRLB)与所需跟踪误差范围的上边界进行比较,以确定自适应采样间隔,而贝叶斯类似CRLB(类似于BCRLB)给出了用于测量功率的标准分配。此外,考虑到目标雷达横截面(RCS)的随机性,我们采用CCP打包确定性资源管理模型,该模型通过有效的资源分配将总发射功率最小化。最后,将随机仿真嵌入遗传算法(GA)中,以产生混合智能优化算法(HIOA)来解决CCP优化问题。仿真结果表明,通过资源分配方案可以有效地提高雷达系统的整体性能。

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