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Minimize RSR Award Detail

Research Spending & Results

Award Detail

Awardee:UNIVERSITY OF RHODE ISLAND
Doing Business As Name:University of Rhode Island
PD/PI:
  • Meng Wei
  • (401) 874-6530
  • matt-wei@uri.edu
Co-PD(s)/co-PI(s):
  • Marco Alvarez
  • Yang Shen
Award Date:07/01/2020
Estimated Total Award Amount: $ 406,376
Funds Obligated to Date: $ 406,376
  • FY 2020=$406,376
Start Date:07/01/2020
End Date:06/30/2023
Transaction Type:Grant
Agency:NSF
Awarding Agency Code:4900
Funding Agency Code:4900
CFDA Number:47.050
Primary Program Source:040100 NSF RESEARCH & RELATED ACTIVIT
Award Title or Description:Using machine learning method to detect slow slip events in ocean bottom pressure data
Federal Award ID Number:2025563
DUNS ID:144017188
Parent DUNS ID:075705780
Program:Marine Geology and Geophysics
Program Officer:
  • Deborah K. Smith
  • (703) 292-7978
  • dksmith@nsf.gov

Awardee Location

Street:RESEARCH OFFICE
City:KINGSTON
State:RI
ZIP:02881-1967
County:Kingston
Country:US
Awardee Cong. District:02

Primary Place of Performance

Organization Name:University of Rhode Island
Street:215 S Ferry Rd
City:Narragansett
State:RI
ZIP:02882-1197
County:Narragansett
Country:US
Cong. District:02

Abstract at Time of Award

This project seeks to improve the understanding of earthquakes and tsunamis in subduction zones. Special tectonic signals that can be measured at the seafloor may represent the release of tectonic stress in subduction zones. If so, measurements from pressure sensors on the seafloor could be used to estimate earthquake and tsunami risks. However, noise from ocean processes makes it difficult to detect this signal accurately. This project will take advantage of recent advances in a computational technique, machine learning, to develop a better detector of this signal.. This project will support early career scientists and people from underrepresented groups (Latino and Female) in STEM fields. It will also support a graduate student and several undergraduates. This project will develop teaching modules of machine learning at the graduate, undergraduate, high school, and middle school levels. This project will publish code in the public domain and share the teaching modules within the community immediately after the project finishes. Shallow slow slip events provide a mechanism for strain release at the shallow part of subduction zones, which is important for tsunami hazard assessment. For most subduction zones, the trench is far from the coast and it is unclear whether shallow slow slip events exist. Even in places where these events were detected, key quantities such as the duration and magnitude were not well constrained. As a result, the locking state of shallow subduction zones and the mechanism of shallow slow slip events is still unclear. To answer these questions, this project will take advantage of recent advancement in machine learning and the accumulation of seafloor pressure datasets to improve our ability to detect shallow slow slip events in subduction zones. Preliminary analyses of seafloor pressure data from New Zealand have demonstrated that machine learning can successfully identify known slow slip events and further reduce ocean noise in seafloor pressure data. Using available data from several subduction zones, this project will further improve the machine-learning detector to estimate the duration, amplitude, and timing of shallow slow slip events. This project will also develop an improved way to reduce ocean noise in seafloor pressure data by using machine learning to capture the complex relationship of measurable quantities in the ocean. Collectively, this project will provide better tools to measure shallow slow slip events and assess the locking state of shallow subduction zones. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

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