Award Abstract # 2053694
Collaborative Research: Development of Realistic Seismic Input Motions for Improving the Resilience of Infrastructure to Earthquakes

NSF Org: CMMI
Division of Civil, Mechanical, and Manufacturing Innovation
Recipient: CENTRAL MICHIGAN UNIVERSITY
Initial Amendment Date: November 2, 2021
Latest Amendment Date: March 12, 2024
Award Number: 2053694
Award Instrument: Standard Grant
Program Manager: Giovanna Biscontin
gibiscon@nsf.gov
 (703)292-2339
CMMI
 Division of Civil, Mechanical, and Manufacturing Innovation
ENG
 Directorate for Engineering
Start Date: November 1, 2021
End Date: October 31, 2024 (Estimated)
Total Intended Award Amount: $200,000.00
Total Awarded Amount to Date: $326,000.00
Funds Obligated to Date: FY 2022 = $208,000.00
FY 2023 = $63,000.00

FY 2024 = $55,000.00
History of Investigator:
  • Chanseok Jeong (Principal Investigator)
    jeong1c@cmich.edu
Recipient Sponsored Research Office: Central Michigan University
119 BOVEE UNIVERSITY CTR
MOUNT PLEASANT
MI  US  48858-3854
(989)774-6467
Sponsor Congressional District: 02
Primary Place of Performance: Central Michigan University
MI  US  48859-0001
Primary Place of Performance
Congressional District:
02
Unique Entity Identifier (UEI): JJDYK36PRTL5
Parent UEI:
NSF Program(s): DRRG-Disaster Resilience Res G
Primary Program Source: 01002324DB NSF RESEARCH & RELATED ACTIVIT
01002223DB NSF RESEARCH & RELATED ACTIVIT

01002425RB NSF RESEARCH & RELATED ACTIVIT

01002223RB NSF RESEARCH & RELATED ACTIVIT
Program Reference Code(s): 019Z, 043E, 9178, 1504, 9251, 037E, 9231, 068P, 073E, 116E, 042E, CVIS, 170E, 036E
Program Element Code(s): 198Y00
Award Agency Code: 4900
Fund Agency Code: 4900
Assistance Listing Number(s): 47.041

ABSTRACT

The ability to reconstruct a seismic wave field in a domain of interest from sparsely-measured seismic ground motion data can help engineers to accurately model potential damage during earthquakes, improve safety, and reduce costs. Realistic seismic ground motions are essential for improving design and assessment of infrastructure by engineers, owners, and regulators. Although a large amount of ground motion data are available from modern sensors (e.g., accelerometers, optical cables, etc.), no established method can reconstruct the full 3 component (3C) incident wave field from the measurements in a three dimensional (3D) near-surface domain. This Disaster Resilience Research Grants (DRRG) project will address this need by developing a new method for reconstructing a full, 3C seismic wave field within a soil/rock volume adjacent to infrastructure from field measurements. The resulting 3C seismic wave field obtained by this approach accounts for local geology and variability, and can be used as a realistic seismic motion input into models of structures and infrastructure to assess their performance during earthquakes.

Current use of one component (1C) motions for horizontal and vertical seismic shaking introduces a number of epistemic, modeling uncertainties into soil-structure interaction analysis. Regional-scale wave models need information about seismic sources, and deep and shallow geology that introduces large epistemic and aleatory, parametric uncertainties in the generated seismic motions. This project will develop a method for resolving these issues and providing accurate, realistic seismic motions that will improve modeling and simulation of earthquake-soil-structure interaction (ESSI) behavior. Consequently, design of infrastructure and lifelines and assessment of their earthquake response will be improved, resulting in increased resilience to seismic loading. The method will be integrated into a public domain program, Real-ESSI simulator (http://real-essi.us). The methodology will be scalable to various types of measurement modes (e.g., full translational 3C, 6C (translational 3C with rotational 3C), vertical-only 1C or the amplitude of full-3C motions measured by accelerometers at discrete locations, surface vibrations measured by vision-based sensors, or 3C motions-along-lines measured by optical cables). An advisory panel will provide feedback on the project to facilitate translation of the research into industrial practice. The PIs will develop online educational material on 'Inverse Modeling for ESSI Systems'. Such educational effort and material will help educate not only students working on this project, but also undergraduate and graduate students worldwide, as well as practicing engineers with interest in modeling of ESSI behavior.

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.

PUBLICATIONS PRODUCED AS A RESULT OF THIS RESEARCH

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(Showing: 1 - 10 of 11)
Maharjan, Shashwat and Guidio, Bruno and Jeong, Chanseok "Convolutional neural network for identifying effective seismic force at a DRM layer for rapid reconstruction of SH ground motions" Earthquake Engineering & Structural Dynamics , v.53 , 2023 https://doi.org/10.1002/eqe.4049 Citation Details
Guidio, B. and Jeong, C. "Full-waveform inversion of seismic input motions at a domain reduction method boundary in a PML-truncated domain" 15th World Congress on Computational Mechanics (WCCM-XV) and 8th Asian Pacific Congress on Computational Mechanics (APCOM-VIII) Virtual Congress , 2022 https://doi.org/10.23967/wccm-apcom.2022.055 Citation Details
Guidio, Bruno and Goh, Heedong and Jeong, Chanseok "Effective seismic force retrieval from surface measurement for SH-wave reconstruction" Soil Dynamics and Earthquake Engineering , v.165 , 2023 https://doi.org/10.1016/j.soildyn.2022.107682 Citation Details
Guidio, Bruno and Goh, Heedong and Kallivokas, Loukas F and Jeong, Chanseok "On the reconstruction of the near-surface seismic motion" Soil Dynamics and Earthquake Engineering , v.177 , 2024 https://doi.org/10.1016/j.soildyn.2023.108414 Citation Details
Guidio, Bruno and Jeremi, Boris and Guidio, Leandro and Jeong, Chanseok "Passive seismic inversion of SH wave input motions in a truncated domain" Soil Dynamics and Earthquake Engineering , v.158 , 2022 https://doi.org/10.1016/j.soildyn.2022.107263 Citation Details
Guidio, Bruno and Nam, Boo Hyun and Jeong, Chanseok "Multilevel Genetic AlgorithmBased AcousticElastodynamic Imaging of Coupled FluidSolid Media to Detect an Underground Cavity" Journal of Computing in Civil Engineering , v.37 , 2023 https://doi.org/10.1061/(ASCE)CP.1943-5487.0001058 Citation Details
Kim, Boyoung and Maharjan, Shashwat and Pranto, Fazle Mahdi and Guidio, Bruno and Schaal, Christoph and Jeong, Chanseok "Convolutional neural network and level-set spectral element method for ultrasonic imaging of delamination cavities in an anisotropic composite structure" Ultrasonics , v.138 , 2024 https://doi.org/10.1016/j.ultras.2024.107254 Citation Details
Lloyd, Stephen and Jeong, Chanseok "Discretize-Then-Optimize Modeling for Dynamic Force Inversion Based on RungeKutta Explicit Time Integration" Journal of Engineering Mechanics , v.150 , 2024 https://doi.org/10.1061/JENMDT.EMENG-7336 Citation Details
Lloyd, Stephen and Schaal, Christoph and Jeong, Chanseok "Inverse modeling and experimental validation for reconstructing wave sources on a 2D solid from surficial measurement" Ultrasonics , v.128 , 2023 https://doi.org/10.1016/j.ultras.2022.106880 Citation Details
Maharjan, Shashwat and Guidio, Bruno and Fathi, Arash and Jeong, Chanseok "Deep and Convolutional Neural Networks for identifying vertically-propagating incoming seismic wave motion into a heterogeneous, damped soil column" Soil Dynamics and Earthquake Engineering , v.162 , 2022 https://doi.org/10.1016/j.soildyn.2022.107510 Citation Details
Pranto, Fazle Mahdi and Maharjan, Shashwat and Jeong, Chanseok "Level-Set and Learn: Convolutional Neural Network for Classification of Elements to Identify an Arbitrary Number of Voids in a 2D Solid Using Elastic Waves" Journal of Engineering Mechanics , v.149 , 2023 https://doi.org/10.1061/JENMDT.EMENG-6840 Citation Details
(Showing: 1 - 10 of 11)

PROJECT OUTCOMES REPORT

Disclaimer

This Project Outcomes Report for the General Public is displayed verbatim as submitted by the Principal Investigator (PI) for this award. Any opinions, findings, and conclusions or recommendations expressed in this Report are those of the PI and do not necessarily reflect the views of the National Science Foundation; NSF has not approved or endorsed its content.

Project Outcomes Report

Summary: In this NSF project, we developed a new method that leverages data from earthquake motion sensors to recreate in detail how buildings and the ground are shaken during an earthquake. Namely, the method serves as a tool that lets us replay the effects of the earthquake on structures and soil, showing where and when the strongest shaking happened. This helps engineers figure out which parts of a building may have been damaged or failed during the quake. We proved that the recreated motions closely match the real ones, even when sensors are spread out on the ground. However, placing sensors closer together improves the accuracy of the results.

Intellectual Merit: Our method improves on the traditional approach to analyzing earthquake effects in several ways. The traditional method requires detailed data about the materials in a huge area, including the origin of an earthquake (i.e., a hypocenter), which makes it expensive, uncertain, and inaccurate. In contrast, our method only needs information about the materials in the building and nearby ground, making it much simpler, cheaper, and more accurate. It allows engineers to quickly and accurately analyze how earthquake waves affected buildings, foundations, and surrounding soils. This makes it a practical, low-cost tool for monitoring earthquake damage to structures and underground systems using data from just a few sensors placed around the site.

Broader Impacts: Communities affected by earthquakes need to recover quickly to resume normal activities. This project helps improve the post-earthquake resilience of communities by providing a systematic method to assess seismic impacts on infrastructure. Accurate simulations based on sensor data and the presented method can identify weak points in buildings and surrounding soils, aiding decision-makers in planning repairs, allocating funds, and estimating recovery times for critical infrastructure like hospitals, highways, and power plants. The presented algorithm, implemented in the Real-ESSI simulator, will be a publicly available tool for analyzing earthquake impacts. It can automatically process seismic data and reconstruct structural responses to pinpoint potential damage in key structures. This will help engineers and emergency responders prioritize repairs and plan resources effectively. To promote diversity in engineering, the PIs trained students and postdocs from underrepresented groups, including a female undergraduate, a Latin American postdoc, and others from traditionally underrepresented groups, through studies in wave propagation, inverse problems, and machine learning.



Last Modified: 02/13/2025
Modified by: Chanseok Jeong

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