
农业大数据学报 ›› 2026, Vol. 8 ›› Issue (2): 183-198.doi: 10.19788/j.issn.2096-6369.000119
赵燕1(
), 李霞1,*(
), 冯建中2,*(
), 郭静利3, 谢能付2, 薛原2
收稿日期:2025-06-09
接受日期:2025-09-28
出版日期:2026-06-26
发布日期:2026-06-26
通讯作者:
李霞,E-mail: 984489463@qq.com;作者简介:赵燕,E-mail: 394927363@qq.com。
基金资助:
ZHAO Yan1(
), LI Xia1,*(
), FENG JianZhong2,*(
), GUO JingLi3, XIE NengFu2, XUE Yuan2
Received:2025-06-09
Accepted:2025-09-28
Published:2026-06-26
Online:2026-06-26
摘要:
我国北方一熟制与两熟制种植过渡区作为农牧交错带的重要部分,主要位于“美丽中国中脊带”的中段,利用遥感技术开展本区域耕地信息时空动态变化监测研究有助于有效保护耕地和敏感农业生态环境、合理开发利用土地资源,且对围绕区域可持续发展目标制定科学区域发展战略与规划等具有重要意义和作用。研究基于Google Earth Engine(GEE)平台在遥感大数据处理与分析上的优势,利用多源、多分辨率遥感影像构建耕地遥感识别特征集,通过随机森林分类器获取研究区耕地信息,分析其时空变化特征。1)研制生产的2000−2020年间11期耕地遥感产品,基于抽样交叉验证方法总体精度优于90%、Kappa系数超过0.80,而基于官方耕地面积统计数据验证整体精度亦在65%−80%,二者互补表明该遥感产品具有较好的可靠性与可用性。2)在空间分布上,耕地资源具有明显的优势地貌特征,主要分布于海拔低于3 500 m、坡度<15°、地形位指数<1.24的平原和丘陵区域,且分布重心向西南方向迁移了12.88 km。3)在时间变化上,2000−2020年近20年间耕地资源总面积呈小幅度减少趋势,至2020年减少了188.17万 hm2,尤其以优质耕地减少最为显著,除陕西省以外,各省、直辖市均呈减少趋势。且此通过协同集成利用多源遥感数据和其他多元数据以及最新的科技赋能支撑手段与途径,实现大范围、长时序、高精度的耕地动态监测与分析,合理制定科学发展规划,实施差异化的耕地保护措施与奖惩机制、优化土地利用结构等是缓解我国北方种植制度过渡区耕地资源持续减少、防止治优质耕地被占用的重要保障。
赵燕, 李霞, 冯建中, 郭静利, 谢能付, 薛原. 中国北方种植制度过渡区耕地时空格局演变特征及对策研究[J]. 农业大数据学报, 2026, 8(2): 183-198.
ZHAO Yan, LI Xia, FENG JianZhong, GUO JingLi, XIE NengFu, XUE Yuan. Spatiotemporal Pattern Dynamics of Cultivated Land in the Transitional Zone of Cropping System, Northern China, Based on Multi-source Data from Google Earth Engine, and Coping Strategy[J]. Journal of Agricultural Big Data, 2026, 8(2): 183-198.
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