Low-Complexity Complex KLMS based Non-linear Estimators for OFDM Radar System

U. K. Singh, R. Mitra, V. Bhatia, A. Mishra
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引用次数: 1

Abstract

Recently, kernel-based adaptive filtering (KAF) algorithms have found widespread application in numerous nonlinear signal processing problems; one of them being radar signal processing. In particular, considering the inherent non-linearity in a radar system, KAF has been recently applied for estimation of delay and found to achieve lower variance as compared to classical Fourier-Transform based approach. However, as the radar-return is complex-valued in general, using a traditional complex Gaussian kernel in KAF based estimator yields inaccurate estimates. In this work, we explore Wirtinger’s calculus-based complexification of a reproducing kernel Hilbert space (RKHS) for estimation of delay and Doppler-shift, which guarantees lower estimator-variance, and kernel-stability. Furthermore, since the choice of suitable kernel-width is crucial for RKHS-based estimation of delay and Doppler parameters, we derive an adaption for joint-estimation of kernel-width for the proposed normalized complex kernel least mean square (NCKLMS) based estimator from the radar return. Simulations performed over orthogonal frequency division multiplexed (OFDM)-radar system indicate that the proposed NCKLMS based estimator converges to a significantly lower dictionary-size, thereby leading to simpler implementation, receiver-simplicity, and latency whilst maintaining equivalent squared error performance, which makes the proposed estimators suitable for practical OFDM-radar systems.
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基于低复杂度复杂KLMS的OFDM雷达系统非线性估计
近年来,基于核的自适应滤波(KAF)算法在许多非线性信号处理问题中得到了广泛的应用;其中之一就是雷达信号处理。特别是,考虑到雷达系统固有的非线性,KAF最近被应用于延迟估计,并发现与经典的基于傅里叶变换的方法相比,它可以实现更低的方差。然而,由于雷达回波通常是复值的,在基于KAF的估计器中使用传统的复高斯核会产生不准确的估计。在这项工作中,我们探讨了基于Wirtinger的复化核希尔伯特空间(RKHS)的延迟和多普勒频移估计,它保证了较低的估计方差和核稳定性。此外,由于选择合适的核宽度对于基于rkhs的延迟和多普勒参数估计至关重要,我们推导了基于雷达回波的归一化复核最小均方(NCKLMS)估计器的核宽度联合估计的自适应。在正交频分复用(OFDM)雷达系统上进行的仿真表明,所提出的基于NCKLMS的估计器收敛到一个显着较低的字典大小,从而导致更简单的实现,接收器简单性和延迟,同时保持等效平方误差性能,这使得所提出的估计器适用于实际的OFDM雷达系统。
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