openSTORRS, CT

Collaborative Research: Elements: HUGAI: Human-Geo-AI Coalition Infrastructure Engines for Co-Designing Human-Centric Urban Micromobility Research

National Science Foundation

Description

Urban public spaces are filling with a growing number of micromobility vehicles: examples include electric scooters and bikes, personal vehicles, and delivery robots. Understanding how these vehicles can operate safely and considerately as part of larger transportation systems requires the novel use of techniques from many research disciplines, such as human-computer interactions, robotics, remote sensing, and artificial intelligence (AI). This project creates cyberinfrastructure software, data sets, and AI models that are needed to support this emerging field of research. This project enables its research community to better understand and improve vehicle interactions in complicated, rapidly changing, real-world settings. Direct outcomes include practical solutions for mitigating micromobility-related conflicts and accidents in public spaces. The development and use of this proposed cyberinfrastructure will prepare high school and college students for the nation's future workforce. This project serves the human-centric micromobility research community via three innovative AI-based service engines. First, a sensing and perception engine garners machine, environment, and human aspects from the project team’s established testbeds to strengthen the community's Micromobility-to-Everything Interaction (MEI) data preparation. This addresses the research needs in forming holistic, comprehensive understandings of diverse interaction data and augmenting them for AI model training. Second, an MEI model engine provides the research community with the AI models and tools to expand their sensing modality studies, with self-explainable graph model support. The community benefits from the expanded capabilities in performing extensive AI model studies over multiple datasets and gains interpretable AI model insights. Third, a coalition engine assistant interacts with researchers to help them navigate the cross-domain, cross-discipline research and methods needed to understand MEIs. The project includes a variety of co-designing and workshop training activities that assess research needs and engage participants in hands-on learning and practicing micromobility AI tools. All three key elements will be integrated into a service-oriented pipeline that is used to train a wide range of researchers, practitioners, and cyberinfrastructure and AI workforce in human-centric micromobility research. 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. NSF Award ID: 2608884 | Program: 01002627DB NSF RESEARCH & RELATED ACTIVIT | Principal Investigator: Suining He | Institution: University of Connecticut, STORRS, CT | Award Amount: $300,000 View on NSF Award Search: https://www.nsf.gov/awardsearch/show-award/?AWD_ID=2608884 View on Research.gov: https://www.research.gov/awardapi-service/v1/awards/2608884.html

Interested in this grant?

Sign up to get match scores, save grants, and start your application with AI-powered tools.

Start Free Trial

Grant Details

Funding Range

$300,000 - $300,000

Deadline

August 31, 2029

Geographic Scope

STORRS, CT

Status
open

External Links

View Original Listing

Want to see how well this grant matches your organization?

Get Your Match Score

Get personalized grant matches

Start your free trial to save opportunities, get AI-powered match scores, and manage your applications in one place.

Start Free Trial