Probing Earthquake faults with Artificial Intelligence | Webinar

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Machine learning methods require lots of training data. But data simply doesn’t exist for an entire earthquake cycle, i.e. the time where stress on a fault (such as the San Andreas fault in California) builds up over a long period of time (say, years or decades) until the stress is suddenly released in an earthquake. Geophysical data exist usually only for a portion of an earthquake cycle. This makes AI very challenging for earthquake studies, so how to proceed? \n\nThe approach that we settled on was to apply laboratory earthquake experimental (‘labquake’) data to develop AI skills that could ultimately be applied in Earth. Labquakes are miniature earthquakes generated on scaled-down faults in a laboratory located at the Pennsylvania State University and operated by Chris Marone. Simultaneously, we began conducting computer simulations of lab-scale quakes. We found that machine learning models that have been trained on lab quake, acoustic emission (AE) data do a surprisingly good job in predicting fault properties such as the fault friction and the fault displacement, as well as the timing of upcoming lab quakes. Remarkably, the AE contains a fingerprint of the fault behavior at all times. But these models still require much training data, far too much to be applied in Earth except under certain circumstances. \n\nSlow-slip events (also called silent earthquakes) are different from earthquakes in that a slow-slip event releases its energy not in seconds like in an earthquake but over much longer periods of time – in hours, days, or even months. Thanks to these elongated timescales, many slow earthquakes are available to train a machine learning model. Geophysicists have measured slow-slip events along a 1000 km stretch of the coast of North America over the last three decades. Our team was able to “hindcast” slow-slip event timing based on the data which preceded them to about within a week. \n\nFollowing this work, we devised a path forward for seismogenic faults—those that cause earthquakes—using the concept of transfer learning. Computer simulations of faults are relatively inexpensive to conduct for many fault cycles. We found that when the data from the computer simulations are enriched with data from an actual lab experiment, predictions are very good. This concept, building computer simulations of a fault in Earth and enriching the model with a small portion of actual data from the fault is a path forward to Earth. Simultaneously, we are intending to include a model of frictional behavior in the deep learning approach we are developing. As we develop and apply these approaches to seismogenic faults, we will determine whether progress can be made on the challenging prediction problem in Earth. \n\nSpeaker: \nPaul Johnson, Fellow, Los Alamos National Laboratory\n\n Moderator:\nFrederik Tilmann, Head of the seismology section, GFZ\n\n Watch the latest #AIforGood videos!\n\n\nExplore more #AIforGood content:\n AI for Good Top Hits\n   • Top Hits  \n\n AI for Good Webinars\n   • AI for Good Webinars  \n\n AI for Good Keynotes\n   • AI for Good Keynotes  \n\n Stay updated and join our weekly AI for Good newsletter:\nhttp://eepurl.com/gI2kJ5\n\n Discover what's next on our programme!\nhttps://aiforgood.itu.int/programme/\n\nCheck out the latest AI for Good news:\nhttps://aiforgood.itu.int/newsroom/\n\nExplore the AI for Good blog:\nhttps://aiforgood.itu.int/ai-for-good-blog/\n\n Connect on our social media:\nWebsite: https://aiforgood.itu.int/\nTwitter: https://twitter.com/ITU_AIForGood\nLinkedIn Page: https://www.linkedin.com/company/26511907 \nLinkedIn Group: https://www.linkedin.com/groups/8567748 \nInstagram: https://www.instagram.com/aiforgood \nFacebook: https://www.facebook.com/AIforGood\n\nWhat is AI for Good?\nThe AI for Good series is the leading action-oriented, global & inclusive United Nations platform on AI. The Summit is organized all year, always online, in Geneva by the ITU with XPRIZE Foundation in partnership with over 35 sister United Nations agencies, Switzerland and ACM. The goal is to identify practical applications of AI and scale those solutions for global impact.\n\nDisclaimer:\nThe views and opinions expressed are those of the panelists and do not reflect the official policy of the ITU.\n\n#AIforGoodWebinars #AIforNaturalDisasterManagement




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