Analog neural networks are highly effective to solve some optimization problems, and they have been used for target localization in distributed multiple-input multiple-output (MIMO) radar. In this work, we design a new relaxed energy function based neural network (RNFNN) for target localization in distributed MIMO radar. We start with the maximum likelihood (ML) target localization with a complicated objective function, which can be transformed to a tractable one with equality constraints by introducing some auxiliary variables. Different from the existing Lagrangian programming neural network (LPNN) methods, we further relax the optimization problem formulated for target localization, so that the Lagrangian multiplier terms are no longer needed, leading to a relaxed energy function with better convexity. Based on the relaxed energy function, a RNFNN is implemented with much simpler structure and faster convergence speed. Furthermore, the RNFNN method is extended to localization in the presence of transmitter and receiver location errors. It is shown that the performance of the proposed localization approach achieves the Cram\'er-Rao lower bound (CRLB) within a wider range of signal-to-noise ratios (SNRs). Extensive comparisons with the state-of-the-art approaches are provided, which demonstrate the advantages of the proposed approach in terms of performance improvement and computational complexity (or convergence speed).
翻译:模拟神经网络对于解决某些优化问题非常有效,它们被用于在分布式多投入多输出(MIMO)雷达中的目标本地化。在这项工作中,我们设计了一个新的放松能源功能型神经网络(RNFNNNN),用于在分布式MIMO雷达中的目标本地化。我们从最大可能性(ML)目标本地化开始,具有复杂的客观功能,可以通过引入一些辅助变量,将其转换为具有平等限制的可移植功能。不同于现有的拉格朗江编程神经网络(LPNN)方法,我们进一步放松了为目标本地化而拟定的优化问题,这样就不再需要Lagrangian的倍增条件,从而导致一个更稳定的放松的能源功能。基于宽松的能源功能,RNFNNN以更简单得多的结构和更快的趋同速度执行。此外,RNFNN方法可以推广到在发送器和接收器位置错误的情况下实现本地化,拟议的本地化方法的表现达到了Cram\er-Rao较低约束(CRLB),因此不再需要,在更广泛的信号与计算方法的复杂度上,在更大范围内的比较-RIS的改进方法中提供。