Robust Differential Received Signal Strength-Based Localization
Yongchang Hu, Geert Leus

TL;DR
This paper develops robust localization methods using differential RSS measurements that effectively handle uncertainties in transmit power, PLE, and anchor positions, improving accuracy and robustness in practical scenarios.
Contribution
It introduces new estimators, including a robust SDP-based method, for DRSS localization under model uncertainties, addressing a gap in existing localization techniques.
Findings
RSDPE outperforms other estimators under high measurement noise.
Proposed methods effectively handle unknown transmit power and PLE.
RSDP-BCDE converges to RSDPE performance with known PLE.
Abstract
Source localization based on signal strength measurements has become very popular due to its practical simplicity. However, the severe nonlinearity and non-convexity make the related optimization problem mathematically difficult to solve, especially when the transmit power or the path-loss exponent (PLE) is unknown. Moreover, even if the PLE is known but not perfectly estimated or the anchor location information is not accurate, the constructed data model will become uncertain, making the problem again hard to solve. This paper particularly focuses on differential received signal strength (DRSS)-based localization with model uncertainties in case of unknown transmit power and PLE. A new whitened model for DRSS-based localization with unknown transmit powers is first presented and investigated. When assuming the PLE is known, we introduce two estimators based on an exact data model, an…
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