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2218063

Cooperative Agreement

Overview

Grant Description
RII Track-2 FEC: Explainable and Adaptable Artificial Intelligence for Advanced Manufacturing

Advanced technologies have radically transformed manufacturing and are essential to modern economic prosperity. The goal of this project is to leverage emerging technologies, i.e., Artificial Intelligence (AI), 3D metal printing, and robotics, to increase the quality, capability, safety, and sustainability of advanced manufacturing (ADVMFG) in Northern New England. The project will also encourage the adoption of new technologies in industry to address manufacturing challenges facing the region.

These two objectives will be accomplished by creating a scientifically- and geographically-interlinked team, i.e., Northeast Integrated Intelligent Manufacturing Lab (NIIM), consisting of members from the University of Maine, University of New Hampshire, University of Vermont, Dartmouth College, Southern Maine Community College, and Vermont Technical College communities. Although initial funding for NIIM is from a National Science Foundation (NSF) Research Infrastructure Improvement Track-2 Focused EPSCoR Collaboration (RII Track-2 FEC) award, NIIM will sustainably impact the EPSCoR jurisdictions of Maine (ME), New Hampshire (NH), and Vermont (VT) for years to come. NIIM will draw on the unique strengths and rich assets of each state and fully leverage existing state and federal investments.

The project's research team, led by early career faculty and senior mentors, will investigate how to integrate state-of-the-art AI techniques into modern manufacturing processes and systems. A proactive large-scale workforce and economic development assessment will identify the technological needs of firms in the region, which will inform project research and outreach activities, as well as identify skills gaps and opportunities for training and building career pathways in ADVMFG.

The project will extend STEM experiences to undergraduates and graduates, especially those underrepresented in STEM fields. This project will also create new components for Upward Bound for low-income high school students, who will potentially be first-generation undergraduate students, and Northeast Passage for disabled students and workers at community and technical colleges.

The team will work closely with the Manufacturing Extension Partnership Programs (MEPs) in the three states, an Industrial Advisory Board, industry partners, and the US Economic Development Administration University Center for Economic Development. Working with these organizations will ensure that this Track-2 project remains closely tied to state and regional economic development priorities.

In this era of Industry 4.0, intelligent tools and techniques are opening new dimensions to optimize manufacturing processes and systems. The Northeast Integrated Intelligent Manufacturing Lab (NIIM), established in this project, aims to create a new, explainable and adaptable AI framework that fills existing and future technology gaps in manufacturing, such as long and expensive experiments and simulations, lack of coordination among multiple machines, and difficulty in programming robots for complicated manufacturing tasks.

Our convergent research teams across three EPSCoR jurisdictions (ME, NH, and VT) will work closely with industry to create:
(a) New AI models with intrinsic interpretability and increased adaptability to support advanced manufacturing (ADVMFG);
(b) AI-guided design for additive manufacturing of metals that seamlessly connects multi-scale modeling and property predictions without unnecessary trial-and-error;
(c) Self-aware CNC machines that optimize the coordination and control in subtractive manufacturing;
(d) Industrial robots that efficiently and safely learn from video demonstrations for cellular manufacturing;
(e) An industry-driven, unified hybrid manufacturing framework; and
(f) An understanding of the factors that influence the adoption of new technologies by manufacturing businesses.

The project anticipates specific outcomes that will be of immediate relevance to ADVMFG companies in Northern New England. For example, it is expected that the project will yield sample-efficient robot learning techniques that will enable factory workers to teach robots new skills through visual demonstrations, allow robots to learn from failure and request relevant demonstrations, and generate risk-bounded safe policies using uncertainty aware learning.

This project will serve the Northern New England manufacturing sector through relevant research, workforce development, and education. Diversity and inclusion efforts are integrated to remove barriers to STEM education for underrepresented, low-income, potential first-generation, and/or disabled individuals.

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.
Funding Goals
THE GOAL OF THIS FUNDING OPPORTUNITY, "EPSCOR RESEARCH INFRASTRUCTURE IMPROVEMENT PROGRAM: TRACK-2 FOCUSED EPSCOR COLLABORATIONS (RII TRACK-2 FEC)", IS IDENTIFIED IN THE LINK: HTTPS://WWW.NSF.GOV/PUBLICATIONS/PUB_SUMM.JSP?ODS_KEY=NSF22523
Grant Program (CFDA)
Place of Performance
Orono, Maine 04469-5717 United States
Geographic Scope
Single Zip Code
Analysis Notes
Amendment Since initial award the End Date has been extended from 07/31/24 to 07/31/26 and the total obligations have increased 50% from $3,000,000 to $4,500,000.
University Of Maine System was awarded Explainable Adaptable AI Advanced Manufacturing in Northern New England Cooperative Agreement 2218063 worth $4,500,000 from the NSF Office of Integrative Activities in August 2022 with work to be completed primarily in Orono Maine United States. The grant has a duration of 4 years and was awarded through assistance program 47.083 Integrative Activities. The Cooperative Agreement was awarded through grant opportunity EPSCoR Research Infrastructure Improvement Program: Track-2 Focused EPSCoR Collaborations (RII Track-2 FEC).

Status
(Ongoing)

Last Modified 10/6/23

Period of Performance
8/1/22
Start Date
7/31/26
End Date
77.0% Complete

Funding Split
$4.5M
Federal Obligation
$0.0
Non-Federal Obligation
$4.5M
Total Obligated
100.0% Federal Funding
0.0% Non-Federal Funding

Activity Timeline

Interactive chart of timeline of amendments to 2218063

Subgrant Awards

Disclosed subgrants for 2218063

Transaction History

Modifications to 2218063

Additional Detail

Award ID FAIN
2218063
SAI Number
None
Award ID URI
SAI EXEMPT
Awardee Classifications
Public/State Controlled Institution Of Higher Education
Awarding Office
490106 OFFICE OF INTEGRATIVE ACTIVITIES
Funding Office
490106 OFFICE OF INTEGRATIVE ACTIVITIES
Awardee UEI
PB3AJE5ZEJ59
Awardee CAGE
0NNW8
Performance District
ME-02
Senators
Susan Collins
Angus King

Budget Funding

Federal Account Budget Subfunction Object Class Total Percentage
Research and Related Activities, National Science Foundation (049-0100) General science and basic research Grants, subsidies, and contributions (41.0) $4,500,000 100%
Modified: 10/6/23