Enhancing eLoran Timing Accuracy via Machine Learning with Meteorological and Terrain Data
Taewon Kang, Seunghyeon Park, Pyo-Woong Son, Jiwon Seo

TL;DR
This paper introduces a machine learning approach combining weighted linear regression and neural networks to improve eLoran timing accuracy by accounting for meteorological and terrain influences, enhancing its viability as a GPS alternative.
Contribution
The paper presents a novel WLR-AGRNN model that effectively estimates eLoran/GPS timing differences by integrating meteorological data and terrain elevation, outperforming existing methods.
Findings
WLR-AGRNN model achieves higher accuracy in TD estimation.
Incorporating terrain elevation improves model performance.
Experimental results validate the model's effectiveness over four months.
Abstract
The vulnerabilities of global navigation satellite systems (GNSS) to signal interference have increased the demand for complementary positioning, navigation, and timing (PNT) systems. To address this, South Korea has decided to deploy an enhanced long-range navigation (eLoran) system as a complementary PNT solution. Similar to GNSS, eLoran provides highly accurate timing information, which is essential for applications such as telecommunications, financial systems, and power distribution. However, the primary sources of error for GNSS and eLoran differ. For eLoran, the main source of error is signal propagation delay over land, known as the additional secondary factor (ASF). This delay, influenced by ground conductivity and weather conditions along the signal path, is challenging to predict and mitigate. In this paper, we measure the time difference (TD) between GPS and eLoran using a…
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Taxonomy
MethodsLinear Regression · Greedy Policy Search
