3.8 Proceedings Paper

PROCESSING AND DETECTING ARTIFACTS IN MULTI-INPUT MULTI-OUTPUT PHASE-SENSITIVE ICE PENETRATING RADAR DATA

Publisher

IEEE
DOI: 10.1109/IGARSS46834.2022.9883837

Keywords

phase-sensitive radar; ice penetrating radar; multi-input multi-output imaging; crevasse detection; crevasse formation

Funding

  1. European Research Council as part of the RESPONDER project under the European Union's Horizon 2020 research and innovation program [683043]

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The paper analyzes a two-year dataset collected by a Multi-Input Multi-Output Autonomous Phase-Sensitive Radio-Echo Sounder (MIMO ApRES) at Store Glacier in West Greenland, documenting the formation of a crevasse under the instrument. The study presents methods for processing the data and removing artifacts, and shows that the bottom of a crevasse can be detected in the processed images.
Surface crevasses impact ice sheet mass loss by initiating hydrofracturing and calving at the margins and transporting supraglacial meltwater to the subglacial drainage system. This process subsequently modulates basal sliding and glacier motion. However, the development of robust models for calving and hydrofracture has been limited by a lack of field observations of crevasse formation and geometry. In this paper, we analyze a two-year Multi-Input Multi-Output Autonomous Phase-Sensitive Radio-Echo Sounder (MIMO ApRES) dataset collected at Store Glacier inWest Greenland, which documents the formation of a crevasse that opened under the instrument. We present methods for processing the data as well as identifying and removing artifacts, including clipping, radio frequency interference (RFI), receiver failure events such as elevated thermal noise, and signal leakage between channels. Specifically, we perform a mean squared error (MSE) analysis, clipping detection and quantification, and calculations of total power over time in the frequency domain and the time domain. After characterizing and minimizing these artifacts, we find that the bottom of a crevasse can be detected in the processed images. Our results suggest that, with appropriate data processing, the MIMO ApRES is a promising geophysical system for investigating future crevasse evolution.

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