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Inverse meta-modelling to estimate soil available water capacity at high spatial resolution across a farm

机译:逆元模型可估算整个农场高空间分辨率下的土壤可用水容量

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Geo-referenced information on crop production that is both spatially- and temporally-dense would be useful for management in precision agriculture (PA). Crop yield monitors provide spatially but not temporally dense information. Crop growth simulation modelling can provide temporal density, but traditionally fail on the spatial issue. The research described was motivated by the challenge of satisfying both the spatial and temporal data needs of PA. The methods presented depart from current crop modelling within PA by introducing meta-modelling in combination with inverse modelling to estimate site-specific soil properties. The soil properties are used to predict spatially- and temporally-dense crop yields. An inverse meta-model was derived from the agricultural production simulator (APSIM) using neural networks to estimate soil available water capacity (AWC) from available yield data. Maps of AWC with a resolution of 10 m were produced across a dryland grain farm in Australia. For certain years and fields, the estimates were useful for yield prediction with APSIM and multiple regression, whereas for others the results were disappointing. The estimates contain ‘implicit information’ about climate interactions with soil, crop and landscape that needs to be identified. Improvement of the meta-model with more AWC scenarios, more years of yield data, inclusion of additional variables and accounting for uncertainty are discussed. We concluded that it is worthwhile to pursue this approach as an efficient way of extracting soil physical information that exists within crop yield maps to create spatially- and temporally-dense datasets.
机译:时空密集的作物生产地理参考信息将对精确农业(PA)的管理有用。作物产量监测器提供的是空间密集的信息,而不是时间密集的信息。作物生长模拟建模可以提供时间密度,但传统上在空间问题上失败。满足PA的空间和时间数据需求的挑战推动了所描述的研究。提出的方法与PA中当前的作物模型不同,它通过引入元模型与逆模型相结合来估计特定地点的土壤特性。土壤特性用于预测时空密集的农作物产量。使用神经网络从农业生产模拟器(APSIM)导出逆元模型,以根据可用的产量数据估算土壤的可用水容量(AWC)。在澳大利亚的一个旱地谷物农场绘制了分辨率为10 m的AWC地图。对于某些年份和领域,估算值对于使用APSIM和多重回归进行的产量预测很有用,而对于其他年份,结果令人失望。估算包含需要识别的有关气候与土壤,作物和景观相互作用的“隐性信息”。讨论了使用更多的AWC方案,更多年的收益数据,包含更多变量并考虑不确定性来改进元模型的问题。我们得出的结论是,值得将此方法作为一种有效方法来提取作物产量图中存在的土壤物理信息,以创建时空密集的数据集。

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