Scientific Data (May 2024)

Mapping annual 10-m soybean cropland with spatiotemporal sample migration

  • Hongchi Zhang,
  • Zihang Lou,
  • Dailiang Peng,
  • Bing Zhang,
  • Wang Luo,
  • Jianxi Huang,
  • Xiaoyang Zhang,
  • Le Yu,
  • Fumin Wang,
  • Linsheng Huang,
  • Guohua Liu,
  • Shuang Gao,
  • Jinkang Hu,
  • Songlin Yang,
  • Enhui Cheng

DOI
https://doi.org/10.1038/s41597-024-03273-5
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 18

Abstract

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Abstract China, as the world’s biggest soybean importer and fourth-largest producer, needs accurate mapping of its planting areas for global food supply stability. The challenge lies in gathering and collating ground survey data for different crops. We proposed a spatiotemporal migration method leveraging vegetation indices’ temporal characteristics. This method uses a feature space of six integrals from the crops’ phenological curves and a concavity-convexity index to distinguish soybean and non-soybean samples in cropland. Using a limited number of actual samples and our method, we extracted features from optical time-series images throughout the soybean growing season. The cloud and rain-affected data were supplemented with SAR data. We then used the random forest algorithm for classification. Consequently, we developed the 10-meter resolution ChinaSoybean10 maps for the ten primary soybean-producing provinces from 2019 to 2022. The map showed an overall accuracy of about 93%, aligning significantly with the statistical yearbook data, confirming its reliability. This research aids soybean growth monitoring, yield estimation, strategy development, resource management, and food scarcity mitigation, and promotes sustainable agriculture.