A cultivated planet in 2010 – Part 1: The global synergy cropland map
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Published:2020-08-28
Issue:3
Volume:12
Page:1913-1928
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ISSN:1866-3516
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Container-title:Earth System Science Data
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language:en
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Short-container-title:Earth Syst. Sci. Data
Author:
Lu Miao, Wu Wenbin, You Liangzhi, See LindaORCID, Fritz SteffenORCID, Yu Qiangyi, Wei Yanbing, Chen Di, Yang PengORCID, Xue Bing
Abstract
Abstract. Information on global cropland distribution and
agricultural production is critical for the world's agricultural monitoring
and food security. We present datasets of cropland extent and agricultural
production in a two-paper series of a cultivated planet in 2010. In the
first part, we propose a new Self-adapting Statistics Allocation Model
(SASAM) to develop the global map of cropland distribution. SASAM is based
on the fusion of multiple existing cropland maps and multilevel statistics
of the cropland area, which is independent of training samples. First,
cropland area statistics are used to rank the input cropland maps, and then
a scoring table is built to indicate the agreement among the input datasets.
Secondly, statistics are allocated adaptively to the pixels with higher
agreement scores until the cumulative cropland area is close to the
statistics. The multilevel allocation results are then integrated to obtain
the extent of cropland. We applied SASAM to produce a global cropland
synergy map with a 500 m spatial resolution for circa 2010. The accuracy
assessments show that the synergy map has higher accuracy than the input
datasets and better consistency with the cropland statistics. The synergy
cropland map is available via an open-data repository (https://doi.org/10.7910/DVN/ZWSFAA; Lu et al., 2020). This new cropland map
has been used as an essential input to the Spatial Production Allocation
Model (SPAM) for producing the global dataset of agricultural production
for circa 2010, which is described in the second part of the two-paper series.
Funder
National Natural Science Foundation of China
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
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