For example, GNSS instruments may miss some of these events that are similar in scale to the noise in position data caused by things like varying atmospheric and ionospheric conditions. But with reduced noise in the data, these slow slip events might appear clearly.
That’s the idea behind a recent paper in Seismica that uses a machine learning method to denoise GNSS data by identifying error shared by multiple stations. We connected with Loïc Bachelot to talk about how that method works, and how the team went about the data processing it required. If you’re interested in new machine learning methods, check out our conversation in the video below!