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Main Authors: Hu, Shenghua, Zeng, Guangyang, Xue, Wenchao, Fang, Haitao, Wu, Junfeng, Mu, Biqiang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.13070
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author Hu, Shenghua
Zeng, Guangyang
Xue, Wenchao
Fang, Haitao
Wu, Junfeng
Mu, Biqiang
author_facet Hu, Shenghua
Zeng, Guangyang
Xue, Wenchao
Fang, Haitao
Wu, Junfeng
Mu, Biqiang
contents We study the problem of signal source localization using received signal strength measurements. We begin by presenting verifiable geometric conditions for sensor deployment that ensure the model's asymptotic localizability. Then we establish the consistency and asymptotic efficiency of the maximum likelihood (ML) estimator. However, computing the ML estimator is challenging due to its reliance on solving a non-convex optimization problem. To overcome this, we propose a two-step estimator that retains the same asymptotic properties as the ML estimator while offering low computational complexity, linear in the number of measurements. The main challenge lies in obtaining a consistent estimator in the first step. To address this, we construct two linear least-squares estimation problems by applying algebraic transformations to the nonlinear measurement model, leading to closed-form solutions. In the second step, we perform a single Gauss-Newton iteration using the consistent estimator from the first step as the initialization, achieving the same asymptotic efficiency as the ML estimator. Finally, simulation results validate the theoretical property and practical effectiveness of the proposed two-step estimator.
format Preprint
id arxiv_https___arxiv_org_abs_2505_13070
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RSS-Based Localization: Ensuring Consistency and Asymptotic Efficiency
Hu, Shenghua
Zeng, Guangyang
Xue, Wenchao
Fang, Haitao
Wu, Junfeng
Mu, Biqiang
Systems and Control
We study the problem of signal source localization using received signal strength measurements. We begin by presenting verifiable geometric conditions for sensor deployment that ensure the model's asymptotic localizability. Then we establish the consistency and asymptotic efficiency of the maximum likelihood (ML) estimator. However, computing the ML estimator is challenging due to its reliance on solving a non-convex optimization problem. To overcome this, we propose a two-step estimator that retains the same asymptotic properties as the ML estimator while offering low computational complexity, linear in the number of measurements. The main challenge lies in obtaining a consistent estimator in the first step. To address this, we construct two linear least-squares estimation problems by applying algebraic transformations to the nonlinear measurement model, leading to closed-form solutions. In the second step, we perform a single Gauss-Newton iteration using the consistent estimator from the first step as the initialization, achieving the same asymptotic efficiency as the ML estimator. Finally, simulation results validate the theoretical property and practical effectiveness of the proposed two-step estimator.
title RSS-Based Localization: Ensuring Consistency and Asymptotic Efficiency
topic Systems and Control
url https://arxiv.org/abs/2505.13070