Nature Communications (Aug 2024)

Scalable interpolation of satellite altimetry data with probabilistic machine learning

  • William Gregory,
  • Ronald MacEachern,
  • So Takao,
  • Isobel R. Lawrence,
  • Carmen Nab,
  • Marc Peter Deisenroth,
  • Michel Tsamados

DOI
https://doi.org/10.1038/s41467-024-51900-x
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 11

Abstract

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Abstract We present GPSat; an open-source Python programming library for performing efficient interpolation of non-stationary satellite altimetry data, using scalable Gaussian process techniques. We use GPSat to generate complete maps of daily 50 km-gridded Arctic sea ice radar freeboard, and find that, relative to a previous interpolation scheme, GPSat offers a 504 × computational speedup, with less than 4 mm difference on the derived freeboards on average. We then demonstrate the scalability of GPSat through freeboard interpolation at 5 km resolution, and Sea-Level Anomalies (SLA) at the resolution of the altimeter footprint. Interpolated 5 km radar freeboards show strong agreement with airborne data (linear correlation of 0.66). Footprint-level SLA interpolation also shows improvements in predictive skill over linear regression. In this work, we suggest that GPSat could overcome the computational bottlenecks faced in many altimetry-based interpolation routines, and hence advance critical understanding of ocean and sea ice variability over short spatio-temporal scales.