Opportunity ID: 327815

General Information

Document Type: Grants Notice
Funding Opportunity Number: W81EWF-20-SOI-0025
Funding Opportunity Title: Data Anomaly Detection and Sediment Yield Estimation in the US Army Corps of Engineers’ Reservoir Sedimentation Information (RSI) Database
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Cooperative Agreement
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards: 1
Assistance Listings: 12.630 — Basic, Applied, and Advanced Research in Science and Engineering
Cost Sharing or Matching Requirement: No
Version: Synopsis 3
Posted Date: Jun 22, 2020
Last Updated Date: Aug 10, 2020
Original Closing Date for Applications: Aug 15, 2020
Current Closing Date for Applications: Aug 24, 2020
Archive Date: Sep 23, 2020
Estimated Total Program Funding:
Award Ceiling: $40,000
Award Floor: $0

Eligibility

Eligible Applicants: Others (see text field entitled “Additional Information on Eligibility” for clarification)
Additional Information on Eligibility: This opportunity is restricted to non-federal partners of the Great Rivers Cooperative Ecosystems Studies Unit (CESU)

Additional Information

Agency Name: Dept. of the Army — Corps of Engineers
Description:

The primary objective is to develop a method to identify erroneous data within the RSI system. Ideally, the investigator(s) will utilize machine learning algorithms to identify anomalies within the dataset. A secondary goal of the study is to use the RSI data, with supplementary data from other available data sources, to develop a machine-learning approach to estimate sedimentation rates. Research tasks should include: identifying appropriate supplemental data from other data sources; 2) identify any patterns and trends in the RSI data; 3) develop a machine-learning method to identify anomalies within the RSI data based on the composite dataset; and 4) develop a machine-learning method for estimating reservoir sedimentation rates.

Link to Additional Information:
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

Chelsea M Whitten

Grants Officer

Phone 601-634-4679
Email:chelsea.m.whitten@usace.army.mil

Version History

Version Modification Description Updated Date
Extend close date Aug 10, 2020
Change close date Jun 22, 2020
Jun 22, 2020

DISPLAYING: Synopsis 3

General Information

Document Type: Grants Notice
Funding Opportunity Number: W81EWF-20-SOI-0025
Funding Opportunity Title: Data Anomaly Detection and Sediment Yield Estimation in the US Army Corps of Engineers’ Reservoir Sedimentation Information (RSI) Database
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Cooperative Agreement
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards: 1
Assistance Listings: 12.630 — Basic, Applied, and Advanced Research in Science and Engineering
Cost Sharing or Matching Requirement: No
Version: Synopsis 3
Posted Date: Jun 22, 2020
Last Updated Date: Aug 10, 2020
Original Closing Date for Applications: Aug 15, 2020
Current Closing Date for Applications: Aug 24, 2020
Archive Date: Sep 23, 2020
Estimated Total Program Funding:
Award Ceiling: $40,000
Award Floor: $0

Eligibility

Eligible Applicants: Others (see text field entitled “Additional Information on Eligibility” for clarification)
Additional Information on Eligibility: This opportunity is restricted to non-federal partners of the Great Rivers Cooperative Ecosystems Studies Unit (CESU)

Additional Information

Agency Name: Dept. of the Army — Corps of Engineers
Description:

The primary objective is to develop a method to identify erroneous data within the RSI system. Ideally, the investigator(s) will utilize machine learning algorithms to identify anomalies within the dataset. A secondary goal of the study is to use the RSI data, with supplementary data from other available data sources, to develop a machine-learning approach to estimate sedimentation rates. Research tasks should include: identifying appropriate supplemental data from other data sources; 2) identify any patterns and trends in the RSI data; 3) develop a machine-learning method to identify anomalies within the RSI data based on the composite dataset; and 4) develop a machine-learning method for estimating reservoir sedimentation rates.

Link to Additional Information:
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

Chelsea M Whitten

Grants Officer

Phone 601-634-4679
Email:chelsea.m.whitten@usace.army.mil

DISPLAYING: Synopsis 2

General Information

Document Type: Grants Notice
Funding Opportunity Number: W81EWF-20-SOI-0025
Funding Opportunity Title: Data Anomaly Detection and Sediment Yield Estimation in the US Army Corps of Engineers’ Reservoir Sedimentation Information (RSI) Database
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Cooperative Agreement
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards: 1
Assistance Listings: 12.630 — Basic, Applied, and Advanced Research in Science and Engineering
Cost Sharing or Matching Requirement: No
Version: Synopsis 2
Posted Date: Jun 22, 2020
Last Updated Date: Jun 22, 2020
Original Closing Date for Applications:
Current Closing Date for Applications: Aug 14, 2020
Archive Date: Sep 14, 2020
Estimated Total Program Funding:
Award Ceiling: $40,000
Award Floor: $0

Eligibility

Eligible Applicants: Others (see text field entitled “Additional Information on Eligibility” for clarification)
Additional Information on Eligibility: This opportunity is restricted to non-federal partners of the Great Rivers Cooperative Ecosystems Studies Unit (CESU)

Additional Information

Agency Name: Dept. of the Army — Corps of Engineers
Description:

The primary objective is to develop a method to identify erroneous data within the RSI system. Ideally, the investigator(s) will utilize machine learning algorithms to identify anomalies within the dataset. A secondary goal of the study is to use the RSI data, with supplementary data from other available data sources, to develop a machine-learning approach to estimate sedimentation rates. Research tasks should include: identifying appropriate supplemental data from other data sources; 2) identify any patterns and trends in the RSI data; 3) develop a machine-learning method to identify anomalies within the RSI data based on the composite dataset; and 4) develop a machine-learning method for estimating reservoir sedimentation rates.

Link to Additional Information:
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

Chelsea M Whitten

Grants Officer

Phone 601-634-4679
Email:chelsea.m.whitten@usace.army.mil

DISPLAYING: Synopsis 1

General Information

Document Type: Grants Notice
Funding Opportunity Number: W81EWF-20-SOI-0025
Funding Opportunity Title: Data Anomaly Detection and Sediment Yield Estimation in the US Army Corps of Engineers’ Reservoir Sedimentation Information (RSI) Database
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Cooperative Agreement
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards: 1
Assistance Listings: 12.630 — Basic, Applied, and Advanced Research in Science and Engineering
Cost Sharing or Matching Requirement: No
Version: Synopsis 1
Posted Date: Jun 22, 2020
Last Updated Date: Jun 22, 2020
Original Closing Date for Applications:
Current Closing Date for Applications: Aug 15, 2020
Archive Date: Sep 14, 2020
Estimated Total Program Funding:
Award Ceiling: $40,000
Award Floor: $0

Eligibility

Eligible Applicants: Others (see text field entitled “Additional Information on Eligibility” for clarification)
Additional Information on Eligibility: This opportunity is restricted to non-federal partners of the Great Rivers Cooperative Ecosystems Studies Unit (CESU)

Additional Information

Agency Name: Dept. of the Army — Corps of Engineers
Description:

The primary objective is to develop a method to identify erroneous data within the RSI system. Ideally, the investigator(s) will utilize machine learning algorithms to identify anomalies within the dataset. A secondary goal of the study is to use the RSI data, with supplementary data from other available data sources, to develop a machine-learning approach to estimate sedimentation rates. Research tasks should include: identifying appropriate supplemental data from other data sources; 2) identify any patterns and trends in the RSI data; 3) develop a machine-learning method to identify anomalies within the RSI data based on the composite dataset; and 4) develop a machine-learning method for estimating reservoir sedimentation rates.

Link to Additional Information:
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

Chelsea M Whitten

Grants Officer

Phone 601-634-4679
Email:chelsea.m.whitten@usace.army.mil

Folder 327815 Full Announcement-FOA -> rSOI_RSI_database_20-SOI-0025_Amendment 1.pdf

Packages

Agency Contact Information: Chelsea M Whitten
Grants Officer
Phone 601-634-4679
Email: chelsea.m.whitten@usace.army.mil
Who Can Apply: Organization Applicants

Assistance Listing Number Competition ID Competition Title Opportunity Package ID Opening Date Closing Date Actions
12.630 PKG00262284 Jun 22, 2020 Aug 24, 2020 View

Package 1

Mandatory forms

327815 RR_SF424_3_0-3.0.pdf

Optional forms

327815 RR_SubawardBudget_1_4-1.4.pdf

327815 RR_Budget_1_4-1.4.pdf

327815 RR_PersonalData_1_2-1.2.pdf

327815 SFLLL_2_0-2.0.pdf

327815 RR_KeyPersonExpanded_3_0-3.0.pdf

2025-07-10T08:22:26-05:00

Share This Post, Choose Your Platform!

About the Author: