Data for: Developing a phenology- and pixel-based algorithm for mapping rapeseed at 10m spatial resolution using multi-source data

Jichong Han, Zhao Zhang, Yuchuan Luo, Juan Cao, Liangliang Zhang, Jing Zhang, Ziyue Li
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引用次数: 2

Abstract

Abstract. As a major oilseed crop, large-scale and high-resolution maps of rapeseed (Brassica napus L.) are critical for predicting annual production and ensuring global energy security. However, such free maps are still unavailable in large areas. We designed a new pixel- and phenology-based algorithm and produced a new data product for rapeseed planting area (2017–2019) over 33 countries at 10-m spatial resolution based on the multiple data. The product showed a good consistence (R2 = 0.88) with the official statistics (Food and Agricultural Organization of the United Nations, FAO) at national level. Rapeseed maps achieved at least 0.81 F1-scores of spatial consistency when comparing with the Cropland Data Layer (CDL) of America, Annual Crop Inventory (ACI) in Canada and Crop Map of England (CROME) in England. Moreover, their F1-scores ranged 0.84–0.92 based on the independent validation samples, implying a good consistency with ground truth. Furthermore, we found that rapeseed crop rotation is ≥2 years in almost all countries. Our derived maps with high accuracy suggest the robustness of pixel- and phenology-based algorithm in identifying rapeseed over large regions with various climate and landscapes. The derived rapeseed planting areas freely downloaded can be applied to predict rapeseed production and optimize planting structure. The product is available publicly at http://dx.doi.org/10.17632/ydf3m7pd4j.3 (Han et al., 2021).
研究成果:开发一种基于物候和像素的算法,用于利用多源数据在10米空间分辨率下绘制油菜籽图
摘要作为一种主要的油料作物,油菜(Brassica napus L.)的大尺度和高分辨率地图对于预测年产量和确保全球能源安全至关重要。然而,这种免费地图在大部分地区仍然无法使用。我们设计了一种新的基于像元和物候的算法,并基于多个数据生成了一个新的10 m空间分辨率的33个国家油菜籽种植面积(2017-2019)数据产品。产品与联合国粮农组织(FAO)国家官方统计数据具有良好的一致性(R2 = 0.88)。与美国的耕地数据层(CDL)、加拿大的年度作物清单(ACI)和英国的作物地图(CROME)相比,油菜图的空间一致性至少达到0.81 f1。在独立验证样本的基础上,他们的f1得分在0.84-0.92之间,与基础事实的一致性较好。此外,我们发现几乎所有国家的油菜籽轮作≥2年。我们的衍生地图具有很高的精度,这表明基于像素和物候的算法在识别具有不同气候和景观的大面积油菜籽方面具有鲁棒性。可自由下载得到的油菜籽种植面积可用于油菜籽产量预测和种植结构优化。该产品可在http://dx.doi.org/10.17632/ydf3m7pd4j.3公开获取(Han et al., 2021)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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