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Predicting Patterns of Solar Energy Buildout to Identify Opportunities for Biodiversity ConservationThe construction of solar energy facilities can have positive or negative impacts on biodiversity depending on siting and associated land use transitions. We identified drivers of solar siting and quantified patterns of buildout in states surrounding the Chesapeake Bay watershed – a biodiversity hotspot with numerous ecosystem services. Using a convolutional neural network, we mapped the footprints of ground-mounted solar arrays present in satellite imagery annually from 2017 to 2021 in Delaware, Maryland, Pennsylvania, New York, Virginia, and West Virginia. As of 2021, we identified 958 solar arrays covering 52.3 km2 built primarily on previously cultivated land, while avoiding natural landcover. We fit a binomial-Weibull model to these solar timeseries data in a hierarchical, Bayesian framework to quantify the relationship between geospatial covariates and rate of solar development. Solar array construction rate increased in cultivated areas, areas of lower agricultural suitability, lower slope, lower forest cover, lower biodiversity protection, and greater distances from roads. We also estimated changes in the rate of solar construction over time and found differences among states: acceleration in Virginia and deceleration in New York. We used parameter estimates to map the relative likelihood of future solar development across the study area. This methodology can be used to anticipate where solar is likely to be built in different landscapes and how these patterns align with conservation goals. Around the Chesapeake Bay watershed, the selection of lower quality agricultural areas for solar energy minimizes removal of important habitat and provides opportunities for native plant and pollinator restoration.
Document ID
20240007013
Acquisition Source
Goddard Space Flight Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Michael J. Evans
(George Mason University Fairfax, Virginia, United States)
Kumar Mainali
(University of Maryland, College Park College Park, United States)
Rachel Soobitsky
(Science Systems & Applications, Inc. Hampton, VA, USA)
Emily Mills
(Chesapeake Conservancy)
Susan Minnemeyer
(Chesapeake Conservancy)
Date Acquired
May 31, 2024
Publication Date
May 17, 2023
Publication Information
Publication: Biological Conservation
Publisher: Elsevier
Volume: 283
Issue: 110074
Issue Publication Date: July 1, 2023
ISSN: 0006-3207
e-ISSN: 1873-2917
Subject Category
Life Sciences (General)
Funding Number(s)
CONTRACT_GRANT: 80GSFC20C0044
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
External Peer Committee
Keywords
Artificial Intelligence
Bayesian
Biodiversity
Conservation
Land Use
Remote Sensing
Renewable energy
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