A New PAST-Based Adaptive ESPIRT Algorithm with Variable Forgetting Factor and Regularization

Jianqiang Lin, S. Chan
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引用次数: 2

Abstract

The estimation of signal parameters via rotational invariance techniques (ESPRIT) algorithm is a widely used subspace-based method for direction-of-arrival (DOA) estimation in array signal processing and spectral analysis. It requires the estimation of the signal subspaces of rotational invariance sub-arrays of a sensor array, from which the DOAs can be estimated by solving an eigenvalue problem. This paper proposes a projection approximation subspace tracking (PAST)-based adaptive ESPRIT algorithm with variable forgetting factor (VFF) and variable regularization (VR). The VFF and VR PAST algorithm is based on a recently proposed Locally Optimal FF (LOFF) scheme with improved convergence speed and steady state error performance. Moreover, variable regularization is incorporated to reduce the estimation variance during ill-conditioning or low input signal level. The proposed LOFF-VR adaptive ESPRIT method is also utilized for tracking the eigenvalues and hence the DOAs. Experimental simulations show that the proposed LOFF-VR-ESPRIT algorithm outperforms the conventional approaches in stationary and nonstationary environments, especially in the presence of signal fading.
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一种新的基于过去的可变遗忘因子和正则化自适应ESPIRT算法
旋转不变性估计(ESPRIT)算法是一种基于子空间的阵列信号处理和频谱分析中广泛应用的到达方向估计方法。它要求对传感器阵列旋转不变性子阵列的信号子空间进行估计,并通过求解特征值问题来估计doa。提出了一种基于投影逼近子空间跟踪(PAST)的可变遗忘因子(VFF)和可变正则化(VR)的自适应ESPRIT算法。VFF和VR PAST算法基于最近提出的局部最优FF (LOFF)方案,具有提高的收敛速度和稳态误差性能。此外,该方法还引入了变量正则化,以减小在条件不良或低输入信号电平时的估计方差。提出的LOFF-VR自适应ESPRIT方法还用于跟踪特征值,从而跟踪doa。实验仿真结果表明,所提出的LOFF-VR-ESPRIT算法在平稳和非平稳环境下,特别是在存在信号衰落的情况下,都优于传统的方法。
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