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PHASE: A geostatistical model for the Kriging-based spatial prediction of crop phenology using public phenological and climatological observations

机译:阶段:利用公共物候和气候观测,基于克里格法的作物物候空间预测的地统计学模型

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Detailed information on plant developmental stages, referred as phenological phases, can assist research, applications and synergies e.g., in land use, climate science and remote sensing. Usually, detailed ground information about phenological phases is only available as point observations. However, in most application scenarios of spatially interpolated phenological information is required. In this article, we present an approach for modeling and interpolation of crop phenological phases in temperate climates on the example of the total area of Germany using statistical analysis and a Kriging prediction process. The presented model consists of two major parts. First, daily temperature observations are spatially interpolated to retrieve a countrywide temperature data set. Second, this temperature information is linked to the day of year on which a phenological event was observed by a governmental observation network. The accumulated temperature sum between sowing and observed phenological events is calculated. The day on which the temperature sum on any location exceeds a phase-specific critical temperature sum, which indicates the day of entry of the modeled phase, is finally interpolated to retrieve a countrywide data set of a specific phenological phase. The model was applied on the example of eight agricultural species including cereals, maize and root crops and 37 corresponding phases in 2011. The results for most of the tested crops and phases show significantly lower root mean squared errors (RMSE) values and higher goodness of fit (R-2) values compared to results computed using Ordinary Kriging (OK) and Inverse Distance Weighting (IDW). The modeling accuracy varies between 2.14 days and 11.45 days for heading and emergence of winter wheat, respectively. The uncertainty of the majority of the modeled phases is less than a week. The model is universally applicable due to automatic parametrization, but model accuracies depend on the crop type and increase during a growing season. The possibility to enhance the model by additional explaining variables is demonstrated by consideration of soil moisture within an extended model setting. (C) 2016 Elsevier B.V. All rights reserved.
机译:有关植物发育阶段(称为物候期)的详细信息可以协助研究,应用和协同作用,例如在土地利用,气候科学和遥感方面。通常,有关物候期的详细地面信息只能用作点观测。但是,在大多数应用场景中,都需要空间插值的物候信息。在本文中,我们以统计分析和Kriging预测过程为例,以德国总面积为例,提出了一种在温带气候下对作物物候期进行建模和插值的方法。提出的模型包括两个主要部分。首先,对每日温度观测值进行空间插值以检索全国范围的温度数据集。其次,该温度信息与政府观测网络在一年中的一天发生的物候事件相关联。计算播种和观察到的物候事件之间的累积温度总和。最后,对任何位置的温度总和超过特定于相的临界温度之和的那一天(表示建模阶段的进入日期)进行插值,以检索特定物候期的全国数据集。该模型以2011年的8种农业物种为例,包括谷类,玉米和块根作物以及37个相应阶段。大多数被测作物和阶段的结果均显示出均方根误差(RMSE)值明显降低,而拟合(R-2)值与使用普通克里金法(OK)和反距离权重(IDW)计算的结果进行比较。冬小麦抽穗和出苗的建模精度分别在2.14天和11.45天之间变化。大多数建模阶段的不确定性都小于一周。由于自动参数化,该模型普遍适用,但模型精度取决于作物类型和生长季节的增长。通过在扩展的模型设置中考虑土壤湿度,可以证明通过附加解释变量来增强模型的可能性。 (C)2016 Elsevier B.V.保留所有权利。

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