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首页> 外文期刊>International journal of applied earth observation and geoinformation >Impact of the spatial resolution of climatic data and soil physical properties on regional corn yield predictions using the STICS crop model
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Impact of the spatial resolution of climatic data and soil physical properties on regional corn yield predictions using the STICS crop model

机译:使用STICS作物模型的气候数据和土壤物理性质的空间分辨率对区域玉米产量预测的影响

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摘要

The assimilation of Earth observation (EO) data into crop models has proven to be an efficient way to improve yield prediction at a regional scale by estimating key unknown crop management practices. However, the efficiency of prediction depends on the uncertainty associated with the data provided to crop models, particularly climatic data and soil physical properties. In this study, the performance of the STICS (Simulateur mulTldisciplinaire pour les Cultures Standard) crop model for predicting corn yield after assimilation of leaf area index derived from EO data was evaluated under different scenarios. The scenarios were designed to examine the impact of using fine-resolution soil physical properties, as well as the impact of using climatic data from either one or four weather stations across the region of interest. The results indicate that when only one weather station was used, the average annual yield by producer was predicted well (absolute error <5%), but the spatial variability lacked accuracy (root mean square error= 1.3 t ha(-1)). The model root mean square error for yield prediction was highly correlated with the distance between the weather stations and the fields, for distances smaller than 10 km, and reached 0.5 t ha(-1) for a 5-km distance when fine-resolution soil properties were used. When four weather stations were used, no significant improvement in model performance was observed. This was because of a marginal decrease (30%) in the average distance between fields and weather stations (from 10 to 7 km). However, the yield predictions were improved by approximately 15% with fine-resolution soil properties regardless of the number of weather stations used. The impact of the uncertainty associated with the EO-derived soil-textures and the impact of alterations in rainfall distribution were also evaluated. A variation of about 10% in any of the soil physical textures resulted in a change in dry yield of 0.4 t ha(-1). Changes in rainfall distribution between two abundant rainfalls during the growing season led to a significant change in yield (0.5 t ha(-1) on average). Our results highlight the importance of using fine-resolution gridded daily precipitation data to capture spatial variations of rainfall as well as using fine-resolution soil properties instead of coarse-resolution soil properties from the Canadian soil dataset, especially for regions with high pedodiversity. Crown Copyright (C) 2015 Published by Elsevier BA/. All rights reserved.
机译:事实证明,将地球观测(EO)数据吸收到作物模型中是通过估计关键的未知作物管理实践来提高区域规模的产量预测的有效方法。但是,预测的效率取决于与提供给作物模型的数据(尤其是气候数据和土壤物理特性)相关的不确定性。在这项研究中,在不同情况下,评估了STICS(模拟多学科栽培标准)作物模型在预测从EO数据得出的叶面积指数吸收后的玉米产量的性能。这些方案旨在检查使用高分辨率的土壤物理特性的影响,以及使用来自整个感兴趣地区的一个或四个气象站的气候数据的影响。结果表明,当仅使用一个气象站时,可以很好地预测出生产者的年平均产量(绝对误差<5%),但空间变异性缺乏准确性(均方根误差= 1.3 t ha(-1))。对于小于10 km的距离,用于产量预测的模型均方根误差与气象站与田间的距离高度相关,当使用高分辨率的土壤时,对于5 km的距离,其模型均方根误差达到0.5 t ha(-1)使用属性。当使用四个气象站时,没有观察到模型性能的显着改善。这是因为田野和气象站之间的平均距离(从10到7 km)略有减少(30%)。但是,无论使用多少气象站,使用精细分辨率的土壤特性,单产预测都将提高约15%。还评估了与EO衍生的土壤质地相关的不确定性的影响以及降雨分布变化的影响。任何土壤物理质地的大约10%的变化导致干产量变化0.4 t ha(-1)。在生长季节,两次充沛降雨之间的降雨分布变化导致单产显着变化(平均0.5 t ha(-1))。我们的结果凸显了使用精细的网格每日降水数据来捕获降雨的空间变化以及使用精细的土壤属性而非加拿大土壤数据集中的粗糙分辨率的土壤属性的重要性,尤其是对于高土壤多样性地区。官方版权(C)2015,由Elsevier BA /发布。版权所有。

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