Movable Antennas for Robust Wireless Sensing via Joint Cramér-Rao Bound and Sidelobe Minimization

2026-06-22Information Theory

Information Theory
AI summary

The authors study how to best place movable antennas to improve wireless sensing, specifically for estimating the direction of incoming signals. They identify a trade-off: placing antennas to get very precise local estimates (minimizing CRB) conflicts with reducing errors from confusing similar signal patterns (minimizing sidelobes). To balance this for different noise levels, the authors optimize antenna positions using a new algorithm and find the best settings to minimize overall error. Their approach performs better than traditional fixed antenna setups across various signal conditions.

movable antenna (MA)Cramér-Rao bound (CRB)maximum sidelobe level (MSL)ambiguity functionangle-of-arrival (AoA) estimationsignal-to-noise ratio (SNR)mean squared error (MSE)successive convex approximation (SCA)antenna position optimization
Authors
Wenyan Ma, Lipeng Zhu, Weitong Zhai, Rui Zhang
Abstract
This paper presents a novel design approach for movable antenna (MA)-enabled wireless sensing systems by jointly minimizing the Cramér-Rao bound (CRB) and the maximum sidelobe level (MSL) of the ambiguity function via antenna position optimization. In particular, the mean squared error (MSE) of angle-of-arrival (AoA) estimation is decomposed into a local estimation error within the mainlobe of the ambiguity function (i.e., CRB) and an additional ambiguity error caused by its sidelobes. Since the MSE is dominated by the CRB in the high-signal-to-noise ratio (SNR) regime but by the sidelobes of the ambiguity function in the low-SNR regime, our analysis reveals a fundamental trade-off between CRB minimization and MSL minimization in the moderate-SNR regime. Specifically, minimizing the CRB prefers a narrower mainlobe, where antennas are concentrated near the two edges of the one-dimensional (1-D) movement region; whereas minimizing the MSL favors a wider mainlobe, where antennas are distributed more densely near the center of the movement region. Inspired by this and to ensure robust sensing performance across different SNR regimes, we formulate an optimization problem to minimize the CRB subject to a prescribed MSL constraint via antenna position optimization. An efficient successive convex approximation (SCA) algorithm is developed to optimize the antenna position vector (APV), and a 1-D linear search method is proposed to determine the optimal MSL threshold that minimizes the actual MSE for any given SNR. Numerical results demonstrate that the proposed scheme effectively balances the trade-off between MSL and CRB minimization, thus achieving a significantly lower AoA estimation MSE across the entire SNR range compared to conventional uniform and non-uniform fixed-position antenna (FPA) arrays.