Award Abstract # 1750102
CAREER: Data-driven Models of Human Mobility and Resilience for Decision Making

NSF Org: CNS
Division Of Computer and Network Systems
Recipient: UNIVERSITY OF MARYLAND, COLLEGE PARK
Initial Amendment Date: April 2, 2018
Latest Amendment Date: August 27, 2021
Award Number: 1750102
Award Instrument: Continuing Grant
Program Manager: Sylvia Spengler
sspengle@nsf.gov
 (703)292-7347
CNS
 Division Of Computer and Network Systems
CSE
 Direct For Computer & Info Scie & Enginr
Start Date: April 1, 2018
End Date: March 31, 2024 (Estimated)
Total Intended Award Amount: $500,003.00
Total Awarded Amount to Date: $500,003.00
Funds Obligated to Date: FY 2018 = $112,346.00
FY 2019 = $194,042.00

FY 2021 = $193,615.00
History of Investigator:
  • Vanessa Frias-Martinez (Principal Investigator)
    vfrias@umd.edu
Recipient Sponsored Research Office: University of Maryland, College Park
3112 LEE BUILDING
COLLEGE PARK
MD  US  20742-5100
(301)405-6269
Sponsor Congressional District: 04
Primary Place of Performance: University of Maryland College Park
Hornbake Building, South Wing, 2
College Park
MD  US  20742-3370
Primary Place of Performance
Congressional District:
04
Unique Entity Identifier (UEI): NPU8ULVAAS23
Parent UEI: NPU8ULVAAS23
NSF Program(s): S&CC: Smart & Connected Commun,
Special Projects - CNS,
CPS-Cyber-Physical Systems
Primary Program Source: 01001819DB NSF RESEARCH & RELATED ACTIVIT
01001920DB NSF RESEARCH & RELATED ACTIVIT

01002122DB NSF RESEARCH & RELATED ACTIVIT
Program Reference Code(s): 1045, 1640, 7918, 9102
Program Element Code(s): 033Y00, 171400, 791800
Award Agency Code: 4900
Fund Agency Code: 4900
Assistance Listing Number(s): 47.070

ABSTRACT

This project envisions mobile cyber-physical systems (CPS) where people carrying cell phones generate large amounts of location information that is used to sense, compute and monitor human interactions with the physical environment during environmental dislocations. The main objective will be to identify the types of reactions populations have to a given type of shock, providing decision makers with accurate and informative data-driven representations they can use to create preparedness and response plans. Additionally, the outcomes of this project will allow for the development of tools to assess and improve the effectiveness of different types of preparedness and response policies through feedback loops in the mobile CPS. These feedback loops could show how community behaviors during shocks change when policies are re-defined based on the computations of the CPS, and vice-versa. Previous work by the PI and others has already showed that CPS integrating people and cell phones as sensing platforms can be used to collect location information at large scale and to compute, using data mining and machine learning techniques, human mobility behaviors during shocks. However, most of the results are very limited and ad-hoc, lacking any type of serious applicability from a preparedness and response policy. This project will advance the state of the art by developing accurate methods and effective tools for decision-making during shocks in mobile CPS. From a broader impacts perspective, the proposed research will contribute in two areas: (a) real-world deployments, to promote data-driven policy development, data-driven analyses of human behavior, and the use of feedback loops in mobile CPS for decision-making assessment; and (b) the creation of an educational plan and training opportunities in the areas of data science for social good and mobile CPS for decision making.

The main outcomes of the project will include novel data-driven methods for mobile CPS that will reliably characterize and predict human mobility patterns and resilience during shocks so as to improve preparedness and response policies. The project will make use of cell phone metadata and social media to achieve the following three objectives: (1) to characterize the types of reactions that communities have to different kinds of shocks using real-time data from mobile CPS, which would allow for the development of more adequate preparedness policies to be ready for future events; (2) to create predictive methods to forecast the impact that shock management policies would have on human mobility behaviors and community resilience during a shock, using human behavioral information from the CPS feedback loop when different policies are applied (either in real-time or in batch processing); and (3) to evaluate the transferability of the types of reactions and predictive methods across different shocks, spatio-temporal scales and data sources in mobile CPS, which would provide decision makers with the possibility of analyzing behaviors and resilience in communities where cell phone metadata in the CPS is not fully available. From an intellectual merit perspective, the proposed methods will advance the state of the art in data analytics and real-time systems for CPS in the area of Smart and Connected Communities.

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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Jiahui Wu, Saad Abrar "Enhancing Short-Term Crime Prediction with Human Mobility Flows and Deep Learning Architectures". EPJ Data Science." EPJ data science , 2022 Citation Details
Viren Dias, Lasantha Fernando "Framework to Study Migration Decisions Using Call Detail Record (CDR) Data" IEEE transactions on computational social systems , 2022 Citation Details
Aref Darzi, Vanessa Frias-Martinez "Constructing Evacuation Evolution Patterns and Decisions Using Mobile Device Location Data: A Case Study of Hurricane Irma" Annual report Transportation Research Board , 2021 Citation Details
Hong, Lingzi and Frias-Martinez, Vanessa "Modeling and predicting evacuation flows during hurricane Irma." EPJ data science , v.1 , 2020 https://doi.org/10.1140/epjds/s13688-020-00247-6 Citation Details
Hong, Lingzi and Wu, Jiahui and Frias-Martinez, Enrique and Villarreal, Andrés and Frias-Martinez, Vanessa "Characterization of internal migrant behavior in the immediate post-migration period using cell phone traces" Proceedings of the Tenth International Conference on Information and Communication Technologies and Development , 2019 10.1145/3287098.3287119 Citation Details
Wu, Jiahui and Frias-Martinez, Enrique and Frias-Martinez, Vanessa "Spatial sensitivity analysis for urban hotspots using cell phone traces" Environment and planning , 2021 https://doi.org/ Citation Details
Wu, Jiahui and Frias-Martinez, Enrique and Frias-Martinez, Vanessa "Spatial sensitivity analysis for urban hotspots using cell phone traces" Environment and planning , 2021 https://doi.org/ Citation Details

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