Machine Learning Algorithms for Transplanting Accelerometer Observations in Future Satellite Gravimetry Missions
Mohsen Romeshkani, J\"urgen M\"uller, Sahar Ebadi, Alexey Kupriyanov, Annike Knabe, Nina Fletling, Manuel Schilling

TL;DR
This paper evaluates advanced accelerometer configurations and machine learning techniques for improving Earth's gravity field monitoring in satellite missions, demonstrating that hybrid and transplant-based approaches can enhance accuracy cost-effectively.
Contribution
It introduces novel accelerometer configurations and machine learning methods for data transplantation, improving gravity field recovery in satellite gravimetry.
Findings
Dual hybrid accelerometer setup yields the best gravity retrieval accuracy.
Machine learning enhances data transplantation robustness and performance.
Transplant-based hybrid approach offers a cost-effective alternative to traditional sensors.
Abstract
Accurate and continuous monitoring of Earth's gravity field is essential for tracking mass redistribution processes linked to climate variability, hydrological cycles, and geodynamic phenomena. While the GRACE and GRACE Follow-On (GRACE-FO) missions have set the benchmark for satellite gravimetry using low-low satellite to satellite tracking (LL-SST), the precision of gravity field recovery still strongly depends on the quality of accelerometer (ACC) performance and the continuity of ACC data. Traditional electrostatic accelerometers (EA) face limitations that can hinder mission outcomes, prompting exploration of advanced sensor technologies and data recovery techniques. This study presents a systematic evaluation of accelerometer data transplantation using novel accelerometer configurations, including Cold Atom Interferometry (CAI) accelerometers and hybrid EA-CAI setups, and applying…
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Taxonomy
TopicsGeophysics and Gravity Measurements · GNSS positioning and interference · Ionosphere and magnetosphere dynamics
