Satellite-based Rabi rice paddy field mapping in India: A case study on Telangana state

Q2 Environmental Science
Prashanth Reddy Putta, Fabio Dell’Acqua
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引用次数: 0

Abstract

Accurate rice area monitoring is critical for food security and agricultural policy in smallholder farming regions, yet conventional remote sensing approaches struggle with the spatiotemporal heterogeneity characteristic of fragmented agricultural landscapes. This study developed a phenology-driven classification framework that systematically adapts to local agro-ecological variations across 32 districts in Telangana, India during the 2018-19 Rabi rice season. The research reveals significant spatiotemporal diversity, with phenological timing varying by up to 50 days between districts and field sizes ranging from 0.01 to 2.94 hectares. Our district-specific calibration approach achieved 93.3% overall accuracy, with strong validation against official government statistics (R2=0.920) demonstrating excellent agreement between remotely sensed and ground truth data. The framework successfully mapped 732,345 hectares by adapting to agro-climatic variations, with Northern districts requiring extended land preparation phases (up to 55 days) while Southern districts showed compressed cultivation cycles. Field size analysis revealed accuracy declining 6.8 percentage points from medium to tiny fields, providing insights for operational monitoring in fragmented landscapes. These findings demonstrate that remote sensing frameworks must embrace rather than simplify landscape complexity, advancing region-specific agricultural monitoring approaches that maintain scientific rigor while serving practical policy and food security applications.
印度基于卫星的Rabi稻田测绘:以泰伦加纳邦为例
准确的水稻种植面积监测对小农农业地区的粮食安全和农业政策至关重要,但传统的遥感方法难以应对破碎化农业景观的时空异质性特征。本研究开发了一个物候驱动的分类框架,该框架系统地适应了印度特伦甘纳邦32个地区在2018-19年拉比水稻季节的当地农业生态变化。研究结果显示,不同地区、不同面积(0.01 ~ 2.94公顷)之间的物候时间差异最大可达50天。我们的地区特定校准方法达到了93.3%的总体精度,与官方政府统计数据有很强的验证性(R2=0.920),表明遥感数据和地面真实数据之间具有良好的一致性。该框架通过适应农业气候变化,成功地绘制了732,345公顷的地图,北部地区需要延长土地准备阶段(长达55天),而南部地区则显示了压缩的耕种周期。油田规模分析显示,从中型油田到小型油田,精度下降了6.8个百分点,为破碎景观的操作监测提供了见解。这些发现表明,遥感框架必须包含而不是简化景观复杂性,推进特定区域的农业监测方法,在保持科学严谨性的同时服务于实际政策和粮食安全应用。
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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来源期刊
Environmental Challenges
Environmental Challenges Environmental Science-Environmental Engineering
CiteScore
8.00
自引率
0.00%
发文量
249
审稿时长
8 weeks
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