Minghan Cheng , Ni Song , Josep Penuelas , Matthew F. McCabe , Xiyun Jiao , Yuping Lv , Chengming Sun , Xiuliang Jin
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引用次数: 0
摘要
本研究确定了作物水分生产力(CWP)——量化为单位用水量(kg/m³)的产量——作为农业水资源优化的关键指标。然而,由于农艺和水文专业知识的多学科复杂性,目前的方法在估算精度和操作效率方面存在局限性。为了应对这一挑战,我们的研究通过将长期多光谱/热红外观测与多模式融合系统集成,开发了一个创新的基于无人机的监测框架:(1)陆地表面能量平衡算法(SEBAL)和用于蒸散发(ET)估算的FAO-56 Penman-Monteith模型;(2)随机森林算法结合四种表型生长指标估算产量,最终实现CWP量化。主要科学发现表明:(1)SEBAL在日蒸散发估算方面优于FAO-56 (R²= 0.76 vs. 0.71, RMSE = 1.15 vs. 1.31 mm/d)。(2)机器学习产量模型表现出稳健的预测能力(R²= 0.77,RMSE = 0.98 t/ha),成功捕获了不同处理的产量变异。(3)误差传播分析验证了框架可靠性(CWP RMSE = 0.67 kg/m³),有效区分了不同管理实践的CWP绩效。这一突破验证了无人机遥感在精准农业水资源评价中的运行有效性,为农田灌溉调度优化、抗旱品种选择提供决策支持,并通过CWP标杆和可持续集约化策略进行优化。该方法创新性地融合了多源遥感数据和多模型组合,为作物-水关系研究建立了新的方法基准。
A framework of crop water productivity estimation from UAV observations: A case study of summer maize
This investigation establishes Crop Water Productivity (CWP) - quantified as yield per unit water consumption (kg/m³) - as a pivotal metric for agricultural water resource optimization. However, current methodologies face limitations in estimation accuracy and operational efficiency due to the multidisciplinary complexity integrating agronomic and hydrological expertise. To address this challenge, our research develops an innovative UAV-based monitoring framework through systematic integration of long-term multispectral/thermal infrared observations with multi-model fusion: (1) Surface Energy Balance Algorithm for Land (SEBAL) and FAO-56 Penman-Monteith models for evapotranspiration (ET) estimation; (2) Random Forest algorithm incorporating four phenotypical growth indicators for yield estimation, ultimately enabling CWP quantification. Key scientific findings demonstrate: (1) SEBAL outperformed FAO-56 in daily ET estimation (R² = 0.76 vs. 0.71, RMSE = 1.15 vs. 1.31 mm/d). (2) The machine learning yield model exhibited robust predictive capability (R² = 0.77, RMSE = 0.98 t/ha), successfully capturing yield variability across treatments. (3) Error propagation analysis validated framework reliability (CWP RMSE = 0.67 kg/m³), effectively differentiating CWP performance among management practices. This breakthrough validates the operational efficacy of UAV remote sensing for precision agricultural water assessment, providing decision-support for field-scale irrigation scheduling optimization, drought-resilient cultivar selection through CWP benchmarking and sustainable intensification strategies. The methodology establishes novel methodological benchmarks for crop-water relationship studies through its innovative fusion of multi-source remote sensing data and multiple model combination.
期刊介绍:
Agricultural Water Management publishes papers of international significance relating to the science, economics, and policy of agricultural water management. In all cases, manuscripts must address implications and provide insight regarding agricultural water management.