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Evaluation of survey and remote sensing data products used to estimate land use change in the United States: Evolving issues and emerging opportunities

期刊

ENVIRONMENTAL SCIENCE & POLICY
卷 129, 期 -, 页码 68-78

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.envsci.2021.12.021

关键词

Land use change; Survey data; Thematic maps; Remote sensing; Land use classification; Error; Uncertainty; Biofuel policy

资金

  1. U.S. Department of Agriculture National Institute of Food and Agriculture [2018-10008-28530]

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Transparent, consistent, and statistically reliable land use/land cover area estimates are crucial for assessing land use change and greenhouse gas emissions. This paper reviews six commonly used data sources and two remote sensing-based data products to investigate land use/land cover and change in the contiguous U.S. The study identifies research gaps and challenges in current land use studies and suggests opportunities and emerging techniques for improving reliability. Blended approaches that combine high-quality ground truth data with multitemporal imagery are needed to track non-agricultural lands vulnerable to agricultural expansion.
Transparent, consistent, and statistically reliable land use/ land cover area estimates are needed to assess land use change and greenhouse gas emissions associated with biofuel production and other land uses that are influenced by policy. As relevant studies have increased rapidly during past decades, the methods used to combine data extracted from land use land cover (LULC) surveys and remote sensing-based products and track or report sources of uncertainty vary notably. This paper reviews six data sources that are most commonly used to investigate LULC and change in the contiguous U.S. by highlighting the main characteristics, strengths and weaknesses and considering how uncertainty is assessed by the June Area Survey (JAS), the Census of Agri-culture (COA), the Farm Survey Agency (FSA) acreage, the National Resources Inventory (NRI), the National Wetlands Inventory (NWI), and the Forest Inventory and Analysis (FIA); and two remote sensing-based data products, the Cropland Data Layer (CDL) and the National Land Cover Database (NLCD). The summary and conclusion identify important research gaps or challenges limiting current land use/land cover and change studies (e.g., lack of high-quality reference data and uncertainty quantification, etc.) and opportunities and emerging techniques (data fusion and machine learning) that will improve reliability of land use/land cover assessments and associated policies. Blended approaches that marry high quality ground truth data that are more finely resolved than data supplied by government surveys with multitemporal imagery are needed track use of non-agricultural lands vulnerable to agricultural expansion. These considerations are notably important as the U. S. considers the renewal and possibly revision of its Renewable Fuel Standard, which includes provisions that require monitoring of agricultural land expansion.

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