产量(工程)
农业工程
合成孔径雷达
粮食安全
作物产量
估计
作物
环境科学
农作物保险
遥感
地理
农业
农学
经济
林业
工程类
生物
考古
管理
冶金
材料科学
作者
Tri Setiyono,Emma Quicho,F. Holecz,Nasreen Islam Khan,G. Romuga,A. Maunahan,Cornelia Garcia,Arnel Rala,Jeny Raviz,Francesco Collivignarelli,Luca Gatti,Massimo Barbieri,Do Minh Phuong,Võ Quang Minh,Tuan Quoc Vo,Amornrat Intrman,Preesan Rakwatin,Men Sothy,Veasna Touch,S. Pazhanivelan
标识
DOI:10.1080/01431161.2018.1547457
摘要
A rice yield estimation system was developed based on the crop growth model ORYZA and SAR-derived key information such as start of season (SOS) and leaf area growth rate. Results from study sites in South and South-east Asian countries suggest that incorporating remote sensing data, specifically Synthetic aperture radar (SAR), into a process-based crop model improves the spatial distribution of yield estimates. This article highlights the detailed methodology of SAR data incorporation into crop yield simulation and comprehensive validation of yield forecast and estimates in the Philippines, Vietnam, Cambodia, Thailand, and Tamil Nadu, India. Remote sensing data assimilation into a crop model effectively captures the responses of rice crops to environmental conditions over large spatial coverage, which otherwise is practically impossible to achieve. A process-based crop simulation model is used in the system to ensure that climate information is captured, and this provides the capacity to deliver a mid-season yield forecast for national planning and policy for rice. Good agreement between SAR-based yield and crop-cut-based yield and official yield statistics and ensuring efficiency of the processing suggest that the system is a promising solution for the needed timely information on rice yield for application in food security and policies, climate disaster management, and crop insurance programs.
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