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Improving Spring Maize Yield Estimation at Field Scale by Assimilating Time-Series HJ-1 CCD Data into the WOFOST Model Using a New Method with Fast Algorithms

机译:通过使用快速算法的新方法将时间序列HJ-1 CCD数据纳入WOFOST模型,提高田间规模的春玉米产量估算

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Field crop yield prediction is crucial to grain storage, agricultural field management, and national agricultural decision-making. Currently, crop models are widely used for crop yield prediction. However, they are hampered by the uncertainty or similarity of input parameters when extrapolated to field scale. Data assimilation methods that combine crop models and remote sensing are the most effective methods for field yield estimation. In this study, the World Food Studies (WOFOST) model is used to simulate the growing process of spring maize. Common assimilation methods face some difficulties due to the scarce, constant, or similar nature of the input parameters. For example, yield spatial heterogeneity simulation, coexistence of common assimilation methods and the nutrient module, and time cost are relatively important limiting factors. To address the yield simulation problems at field scale, a simple yet effective method with fast algorithms is presented for assimilating the time-series HJ-1 A/B data into the WOFOST model in order to improve the spring maize yield simulation. First, the WOFOST model is calibrated and validated to obtain the precise mean yield. Second, the time-series leaf area index (LAI) is calculated from the HJ data using an empirical regression model. Third, some fast algorithms are developed to complete assimilation. Finally, several experiments are conducted in a large farmland (Hongxing) to evaluate the yield simulation results. In general, the results indicate that the proposed method reliably improves spring maize yield estimation in terms of spatial heterogeneity simulation ability and prediction accuracy without affecting the simulation efficiency.
机译:预测田间作物的产量对于谷物存储,农田管理和国家农业决策至关重要。当前,作物模型被广泛用于作物产量的预测。但是,当外推到现场规模时,它们会受到输入参数不确定性或相似性的阻碍。结合作物模型和遥感的数据同化方法是估计田间产量的最有效方法。在这项研究中,世界粮食研究(WOFOST)模型用于模拟春玉米的生长过程。常见的同化方法由于输入参数的稀缺,恒定或相似性质而面临一些困难。例如,产量空间异质性模拟,常见同化方法和营养模块的共存以及时间成本是相对重要的限制因素。为了解决田间规模的产量模拟问题,提出了一种简单而有效的快速算法,将时间序列的HJ-1 A / B数据同化到WOFOST模型中,以改善春玉米产量模拟。首先,对WOFOST模型进行校准和验证以获得精确的平均产量。其次,使用经验回归模型根据HJ数据计算时间序列叶面积指数(LAI)。第三,开发了一些快速算法来完成同化。最后,在一个大农田(红星)进行了几次实验,以评估产量模拟结果。总体而言,结果表明,所提出的方法在不影响仿真效率的前提下,在空间异质性仿真能力和预测精度方面可靠地提高了春玉米产量的估计。

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