School of Geography and Tourism, Qufu Normal University, Rizhao, 276800, Shandong, China.
China Meteorological Administration, National Satellite Meteorological Center, China, Beijing, 100101, China.
Environ Monit Assess. 2024 Aug 20;196(9):826. doi: 10.1007/s10661-024-12971-x.
Winter wheat, as one of the world's key staple crops, plays a crucial role in ensuring food security and shaping international food trade policies. However, there has been a relative scarcity of high-resolution, long time-series winter wheat maps over the past few decades. This study utilized Landsat and Sentinel-2 data to produce maps depicting winter wheat distribution in Google Earth Engine (GEE). We further analyzed the comprehensive spatial-temporal dynamics of winter wheat cultivation in Shandong Province, China. The gap filling and Savitzky-Golay filter method (GF-SG) was applied to address temporal discontinuities in the Landsat NDVI (Normalized Difference Vegetation Index) time series. Six features based on phenological characteristics were used to distinguish winter wheat from other land cover types. The resulting maps spanned from 2000 to 2022, featuring a 30-m resolution from 2000 to 2017 and an improved 10-m resolution from 2018 to 2022. The overall accuracy of these maps ranged from 80.5 to 93.3%, with Kappa coefficients ranging from 71.3 to 909% and F1 scores from 84.2 to 96.9%. Over the analyzed period, the area dedicated to winter wheat cultivation experienced a decline from 2000 to 2011. However, a notable shift occurred with an increase in winter wheat acreage observed from 2014 to 2017 and a subsequent rise from 2018 to 2022. This research highlights the viability of using satellite observation data for the long-term mapping and monitoring of winter wheat. The proposed methodology has long-term implications for extending this mapping and monitoring approach to other similar areas.
冬小麦作为世界主要粮食作物之一,在保障粮食安全和塑造国际粮食贸易政策方面发挥着关键作用。然而,在过去几十年中,高分辨率、长时间序列的冬小麦图相对较少。本研究利用 Landsat 和 Sentinel-2 数据在 Google Earth Engine(GEE)中生成冬小麦分布图。我们进一步分析了中国山东省冬小麦种植的综合时空动态。应用 gap filling 和 Savitzky-Golay 滤波器方法(GF-SG)解决了 Landsat NDVI(归一化差异植被指数)时间序列的时间不连续性问题。基于物候特征的六个特征被用于将冬小麦与其他土地覆盖类型区分开来。生成的地图涵盖了从 2000 年到 2022 年的时间段,2000 年至 2017 年的分辨率为 30 米,2018 年至 2022 年的分辨率提高到 10 米。这些地图的整体精度范围为 80.5%至 93.3%,Kappa 系数范围为 71.3%至 90.9%,F1 分数范围为 84.2%至 96.9%。在所分析的时间段内,冬小麦种植面积经历了从 2000 年到 2011 年的下降。然而,从 2014 年到 2017 年,冬小麦种植面积显著增加,随后从 2018 年到 2022 年再次增加。本研究强调了利用卫星观测数据进行冬小麦长期制图和监测的可行性。所提出的方法为将这种制图和监测方法扩展到其他类似地区具有长期意义。