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DESC0025013

Project Grant

Overview

Grant Description
Machine learning tool for prediction amine emission from carbon capture technology
Place of Performance
Miamisburg, Ohio 45342-5063 United States
Geographic Scope
Single Zip Code
Polaron Technologies was awarded Project Grant DESC0025013 worth $249,937 from the Office of Science in July 2024 with work to be completed primarily in Miamisburg Ohio United States. The grant has a duration of 1 year and was awarded through assistance program 81.049 Office of Science Financial Assistance Program. The Project Grant was awarded through grant opportunity FY 2024 Phase I Release 2.

SBIR Details

Research Type
SBIR Phase I
Title
Machine Learning Tool for Prediction Amine Emission from Carbon Capture Technology
Abstract
Statement: Machine learning (ML)-based software will be developed for the efficient and accurate analysis of amine emission data, which will play a pivotal role in the rapid development of carbon capture and storage (CCS) technologies. The tool will revolutionize the utilization of emissions data, providing valuable insights and enhancing monitoring capabilities for carbon capture plants. Its ability to enable real-time monitoring and prediction of amine emissions empowers plant operators to implement timely interventions and optimize operations, thereby minimizing environmental impacts. General statement of how this problem is being addressed: We will develop the PREMAM module, utilizing deep learning techniques like recurrent neural networks (RNN) to forecast amine emissions in carbon capture plants. It will involve constructing a robust forecasting model integrating time-dependent process and emission data, employing techniques such as Stacked LSTM, Bi-directional LSTM, and Convolutional LSTM. By prioritizing causal impact analysis, we will assess emission influences under different conditions and explore mitigation strategies using "what-if" scenarios, leveraging data from the CESAR1 solvent testing campaign at Technology Center Mongstad (TCM) under different parametric tests. What is to be done in Phase I: We aim to develop PREMAM, a data-centric module, for forecasting amine emissions in carbon capture plants. It integrates historical and present operational data and employs deep learning techniques to construct a robust forecasting model under various operational scenarios. We also plan to integrate the developed module into our in-house data analytics platform, MatVerse. Commercial Application and Other Benefits: The envisioned inclusive, intuitive, and machine learning-powered data analysis tool, MatVerse, equipped to integrate and analyze amine emissions datasets, will prove highly beneficial for carbon capture and storage (CCS) technology, as well as industrial process monitoring. It serves a variety of industries, such as oil and gas, coal and biomass power plants, iron and steel, chemicals, and others. Notably, the software's competitive edge lies in its accessibility, allowing non-technical experts to leverage advanced analysis tools through handheld devices or desktop computers.
Topic Code
C58-23c
Solicitation Number
DE-FOA-0003202

Status
(Complete)

Last Modified 9/16/24

Period of Performance
7/22/24
Start Date
7/21/25
End Date
100% Complete

Funding Split
$249.9K
Federal Obligation
$0.0
Non-Federal Obligation
$249.9K
Total Obligated
100.0% Federal Funding
0.0% Non-Federal Funding

Activity Timeline

Interactive chart of timeline of amendments to DESC0025013

Additional Detail

Award ID FAIN
DESC0025013
SAI Number
None
Award ID URI
SAI EXEMPT
Awardee Classifications
Small Business
Awarding Office
892430 SC CHICAGO SERVICE CENTER
Funding Office
892401 SCIENCE
Awardee UEI
X3EVW996V971
Awardee CAGE
7Z3N5
Performance District
OH-10
Senators
Sherrod Brown
J.D. (James) Vance
Modified: 9/16/24