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A Reconstruction Algorithm for Temporally Aliased Seismic Signals Recorded by the InSight Mars Lander.

David SollbergerCedric SchmelzbachFredrik AnderssonJohan O A RobertssonNienke BrinkmanSharon KedarWilliam Bruce BanerdtJohn F ClintonMartin van DrielRaphaël F GarciaDomenico GiardiniMatthias GrottThomas HaagTroy L HudsonPhilippe H LognonnéJan Ten PierickWilliam T PikeTilman SpohnSimon C StählerPeter Zweifel
Published in: Earth and space science (Hoboken, N.J.) (2021)
In December 2018, the NASA InSight lander successfully placed a seismometer on the surface of Mars. Alongside, a hammering device was deployed at the landing site that penetrated into the ground to attempt the first measurements of the planetary heat flow of Mars. The hammering of the heat probe generated repeated seismic signals that were registered by the seismometer and can potentially be used to image the shallow subsurface just below the lander. However, the broad frequency content of the seismic signals generated by the hammering extends beyond the Nyquist frequency governed by the seismometer's sampling rate of 100 samples per second. Here, we propose an algorithm to reconstruct the seismic signals beyond the classical sampling limits. We exploit the structure in the data due to thousands of repeated, only gradually varying hammering signals as the heat probe slowly penetrates into the ground. In addition, we make use of the fact that repeated hammering signals are sub-sampled differently due to the unsynchronized timing between the hammer strikes and the seismometer recordings. This allows us to reconstruct signals beyond the classical Nyquist frequency limit by enforcing a sparsity constraint on the signal in a modified Radon transform domain. In addition, the proposed method reduces uncorrelated noise in the recorded data. Using both synthetic data and actual data recorded on Mars, we show how the proposed algorithm can be used to reconstruct the high-frequency hammering signal at very high resolution.
Keyphrases
  • high frequency
  • deep learning
  • electronic health record
  • machine learning
  • high resolution
  • big data
  • heat stress
  • quantum dots
  • living cells
  • high speed
  • single molecule