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Monitoring winter wheat growth in North China by combining a crop model and remote sensing data

机译:结合作物模型和遥感数据监测华北地区冬小麦生长

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Both of crop growth simulation models and remote sensing method have a high potential in crop growth monitoring and yield prediction. However, crop models have limitations in regional application and remote sensing in describing the growth process.Therefore, many researchers try to combine those two approaches for estimating the regional crop yields. In this paper, the WOFOST model was adjusted and regionalized for winter wheat in North China and coupled through the LAI to the SAIL–PROSPECT model in order to simulate soil adjusted vegetation index (SAVI). Using the optimization software (FSEOPT), the crop model was then re-initialized by minimizing the differences between simulated and synthesized SAVI from remote sensing data to monitor winter wheat growth at the potential production level. Initial conditions, which strongly impact phenological development and growth, and which are hardly known at the regional scale (such as emergence date or biomass at turn-green stage), were chosen to be re-initialized. It was shown that re-initializing emergence date by using remote sensing data brought simulated anthesis and maturity date closer to measured values than without remote sensing data. Also the re-initialization of regional biomass weight at turn-green stage led that the spatial distribution of simulated weight of storage organ was more consistent to official yields. This approach has some potential to aid in scaling local simulation of crop phenological development and growth to the regional scale but requires further validation.
机译:作物生长模拟模型和遥感方法在作物生长监测和产量预测方面都具有很高的潜力。但是,作物模型在描述生长过程方面在区域应用和遥感方面存在局限性,因此,许多研究人员试图将这两种方法结合起来估算区域作物产量。本文对华北地区冬小麦的WOFOST模型进行了调整和分区,并通过LAI与SAIL–PROSPECT模型进行耦合,以模拟土壤调整的植被指数(SAVI)。然后使用优化软件(FSEOPT),通过最小化来自遥感数据的模拟SAVI与合成SAVI之间的差异来重新初始化作物模型,以监测潜在产量水平下的冬小麦生长。选择会重新初始化的初始条件会严重影响物候的发展和增长,并且在区域范围内几乎不为人所知(例如出现日期或转绿阶段的生物量)。结果表明,与不使用遥感数据相比,使用遥感数据重新初始化出现日期可使模拟的花期和成熟日期更接近实测值。在转绿阶段区域生物量权重的重新初始化也导致模拟的存储器官重量的空间分布与官方产量更加一致。这种方法有潜力帮助将作物物候发育和生长的本地模拟扩展到区域规模,但需要进一步验证。

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