Feed-Forward Neural Network for ERS-2 Retracker Threshold Computation ...
Current release candidate v2.0 (RC2) of the ERS-2 retracker threshold model used for producing the satellite-altimetry-based sea-ice thickness climate data record (CDR) v3.0 of the European Space Agencies (ESA) Climate Change Initiative+ (CCI+) on sea ice. Model training is based on orbit trajectory...
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Format: | Software |
Language: | unknown |
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Zenodo
2023
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Subjects: | |
Online Access: | https://dx.doi.org/10.5281/zenodo.8335298 https://zenodo.org/record/8335298 |
Summary: | Current release candidate v2.0 (RC2) of the ERS-2 retracker threshold model used for producing the satellite-altimetry-based sea-ice thickness climate data record (CDR) v3.0 of the European Space Agencies (ESA) Climate Change Initiative+ (CCI+) on sea ice. Model training is based on orbit trajectory matches between ENVISAT and ERS-2 within the mission overlap period between 2002/10 and 2003/04. All training data was generated from trajectory matches within the Arctic basin and within a radius of 1.5 km around the each individual ERS-2 waveform. Initial optimal-retracker thresholds were then computed from ENVISAT average reference freeboards per ERS-2 waveform. Model input are individual echo-waveform subsets of 35 range bins around the first-maximum index used the by the Threshold First Maximum Retracker Algorithm (TFMRA; 5 bins before and 30 bins after the first-maximum index) – threshold computations are therefore independent on any auxiliary data or associated waveform parameters. Model architecture ... |
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