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YIELDSTAT - A spatial yield Model for agricultural crops

机译:YIELDSTAT-农业作物的空间产量模型

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The YIELDSTAT model for crop yields, an advanced hybrid of traditional non-linear regression approaches and expert knowledge databases, was developed to predict the spatial distribution of yields for a range of arable crops (winter wheat, winter barley, winter rye, winter triticale, spring barley, oats, potato, sugar beet, winter oil-seed rape, silage maize, clover, clover/grass mix, lucerne, lucerne/grass mix, fodder grass) and two grassland types (intensive, extensive) in eastern Germany across different scales up to the regional scale. YIELDSTAT accounts for a wide range of yield-influencing factors derived from weather, soil, relief and management data, as well as for the long-term changing atmospheric CO2 concentration and for the trend owing to progress in breeding and agro-technology. YIELDSTAT regression modules were derived from several hundred farm data sets from 1975 to 1990 and tested against recent yield observations from the Federal State of Thuringia, Germany. The model test was performed at three different spatial scales. YIELDSTAT successfully reproduced the observed data at all three scales, with a normalised mean bias error of 3.02% across all crops and scales. Model testing also revealed a number of weaknesses in the model, identifying yield-reducing factors that had not been considered previously. All in all, the model proved fitness-for-purpose for simulating spatial yields, also under assumed future climate conditions. (C) 2013 Elsevier B.V. All rights reserved.
机译:建立了YIELDSTAT作物单产模型,该模型是传统非线性回归方法与专家知识数据库的高级混合模型,用于预测多种耕作作物(冬小麦,冬大麦,冬黑麦,冬黑小麦,德国东部的春季大麦,燕麦,马铃薯,甜菜,冬季油菜,青贮玉米,三叶草,三叶草/草混合物,卢塞恩,卢塞恩/草混合物,饲料草)和德国东部的两种草地类型(集约型,粗养型)扩大到区域规模。根据天气,土壤,地形和管理数据,以及长期变化的大气CO2浓度以及育种和农业技术进步的趋势,YIELDSTAT解释了一系列影响产量的因素。 YIELDSTAT回归模块来自1975年至1990年的数百个农场数据集,并根据德国图林根州的最新产量观测值进行了测试。模型测试是在三个不同的空间尺度上进行的。 YIELDSTAT成功地复制了所有三个尺度的观测数据,所有作物和尺度的归一化平均偏差误差为3.02%。模型测试还揭示了模型中的许多缺陷,从而确定了以前未曾考虑过的降低产量的因素。总而言之,该模型证明了在假定的未来气候条件下模拟空间产量的适用性。 (C)2013 Elsevier B.V.保留所有权利。

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