Integrating Remote Sensing and Deep Learning for Predictive Surveillance of Mine Tailings Impoundments

Information

  • NSF Award
  • 2414588
Owner
  • Award Id
    2414588
  • Award Effective Date
    10/1/2023 - 2 years ago
  • Award Expiration Date
    8/31/2026 - 9 months from now
  • Award Amount
    $ 470,475.00
  • Award Instrument
    Standard Grant

Integrating Remote Sensing and Deep Learning for Predictive Surveillance of Mine Tailings Impoundments

The impacts of climate change have led to an increase in extreme weather events, posing significant challenges to infrastructure resilience and community well-being. Research supported by this Disaster Resilience Research Grant (DRRG) project addresses the critical need to monitor and maintain existing infrastructure in the face of these challenges. Specifically, it focuses on mine tailings impoundments, massive geotechnical structures that store mining waste. The failure of these structures during extreme weather events can cause environmental damage and loss of life. By leveraging satellite imagery analysis, weather data, and deep learning techniques, this project aims to establish a standard monitoring approach for mine tailings impoundments and revolutionize infrastructure monitoring and hazard management. The outcomes will enable the identification of movements within these structures and provide a predictive understanding of failure probability, allowing us to act proactively and prevent disasters. This monitoring approach will enhance community resilience, support hazard management, and establish critical risk profiles for surrounding areas.<br/><br/>The research aims to develop standards for monitoring mine tailings impoundments following their exposure to extreme weather events. The project's research objectives include: (i) analyzing the utility of satellite-based radar stacking techniques and moisture estimates to characterize the temporal performance of mine tailings impoundments; (ii) utilizing geotechnical engineering concepts and satellite observations to characterize the life-cycle of the mine tailings impoundments; (iii) developing standards for monitoring the failure risk profile of mine tailings impoundments utilizing deep learning models applied to satellite observations, environmental data, and extreme event information. By advancing our knowledge in this area, the project has interdisciplinary implications for remote sensing, geoengineering, computer science, and natural hazards engineering. Fusing these disciplines will result in a cost-effective and nonintrusive monitoring methodology that can reduce the consequences of infrastructure failures and provide timely warnings to mitigate hazards. The project's broader impacts include fostering the development of a diverse STEM workforce, improving community safety, and ensuring accessibility to potential end-users through conferences, journals, and online platforms. The ultimate goal is to prevent future disasters and enhance the well-being of both humans and anthropogenic infrastructure.<br/><br/>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.

  • Program Officer
    Giovanna Biscontingibiscon@nsf.gov7032922339
  • Min Amd Letter Date
    1/4/2024 - a year ago
  • Max Amd Letter Date
    6/24/2024 - a year ago
  • ARRA Amount

Institutions

  • Name
    University of Mississippi
  • City
    UNIVERSITY
  • State
    MS
  • Country
    United States
  • Address
    113 FALKNER
  • Postal Code
    386779704
  • Phone Number
    6629157482

Investigators

  • First Name
    Thomas
  • Last Name
    Oommen
  • Email Address
    toommen@olemiss.edu
  • Start Date
    1/4/2024 12:00:00 AM

Program Element

  • Text
    GOALI-Grnt Opp Acad Lia wIndus
  • Code
    150400
  • Text
    DRRG-Disaster Resilience Res G

Program Reference

  • Text
    Grad Prep APG:Enhan. Experience
  • Text
    CIVIL INFRASTRUCTURE
  • Text
    GEOTECHNICAL ENGINEERING
  • Text
    HAZARD AND DISASTER REDUCTION
  • Text
    INTERNSHIPS PROGRAM
  • Text
    RESEARCH EXP FOR UNDERGRADS
  • Text
    GRANT OPP FOR ACAD LIA W/INDUS
  • Code
    1504
  • Text
    UNDERGRADUATE EDUCATION
  • Code
    9178
  • Text
    SUPPL FOR UNDERGRAD RES ASSIST
  • Code
    9231
  • Text
    REU SUPP-Res Exp for Ugrd Supp
  • Code
    9251
  • Text
    CIVIL INFRASTRUCTURE