Artificial Intelligence Deep Learning Model for Mapping Wetlands Yields 94% Accuracy
Annapolis, MD – Chesapeake Conservancy's data science team developed an artificial intelligence deep learning model for mapping wetlands, which resulted in 94% accuracy. Supported by EPRI, an independent, non-profit energy research and development institute; Lincoln Electric System; and the Grayce B. Kerr Fund, Inc., this method for wetland mapping could deliver important outcomes for protecting and conserving wetlands. The results are published in the peer-reviewed journal Science of the Total Environment. The team trained a machine learning (convolutional neural network) model for high-resolution (1m) wetland mapping with freely available data from three areas: Mille Lacs County, Minnesota; Kent County, Delaware; and St. Lawrence County, New York. The full model, which requires local training data provided by state wetlands data and the National Wetlands Inventory (NWI), mapped wetlands with 94% accuracy.
Jan-12-2023, 17:10:13 GMT
- AI-Alerts:
- 2023 > 2023-01 > AAAI AI-Alert for Jan 17, 2023 (1.00)
- Country:
- Atlantic Ocean > North Atlantic Ocean
- Chesapeake Bay (0.05)
- North America > United States
- Delaware > Kent County (0.25)
- Maryland > Anne Arundel County
- Annapolis (0.25)
- Minnesota > Mille Lacs County (0.25)
- Nebraska > Lancaster County (0.05)
- New York > St. Lawrence County (0.25)
- Virginia (0.05)
- Atlantic Ocean > North Atlantic Ocean
- Genre:
- Research Report (0.56)
- Industry:
- Energy > Power Industry (0.35)
- Technology: