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A comparison of within-season yield prediction algorithms based on crop model behaviour analysis

机译:基于作物模型行为分析的季节内产量预测算法比较

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The development of methodologies for predicting crop yield, in real-time and in response to different agro-climatic conditions, could help to improve the farm management decision process by providing an analysis of expected yields in relation to the costs of investment in particular practices. Based on the use of crop models, this paper compares the ability of two methodologies to predict wheat yield (Triticum aestivum L.), one based on stochastically generated climatic data and the other on mean climate data. It was shown that the numerical experimental yield distribution could be considered as a log-normal distribution. This function is representative of the overall model behaviour. The lack of statistical differences between the numerical realisations and the logistic curve showed in turn that the Generalised Central Limit Theorem (GCLT) was applicable to our case study. In addition, the predictions obtained using both climatic inputs were found to be similar at the inter and intra-annual time-steps, with the root mean square and normalised deviation values below an acceptable level of 10% in 90% of the climatic situations. The predictive observed lead-times were also similar for both approaches. Given (i) the mathematical formulation of crop models, (ii) the applicability of the CLT and GLTC to the climatic inputs and model outputs, respectively, and (iii) the equivalence of the predictive abilities, it could be concluded that the two methodologies were equally valid in terms of yield prediction. These observations indicated that the Convergence in Law Theorem was applicable in this case study. For purely predictive purposes, the findings favoured an algorithm based on a mean climate approach, which needed far less time (by 300-fold) to run and converge on same predictive lead time than the stochastic approach. (C) 2015 Elsevier B.V. All rights reserved.
机译:实时预测作物产量并响应不同农业气候条件的方法的发展,可以通过对特定实践中与投资成本有关的预期产量进行分析,有助于改善农场管理决策过程。基于作物模型的使用,本文比较了两种方法预测小麦产量的能力(一种基于随机生成的气候数据,另一种基于平均气候数据)。结果表明,数值实验的产量分布可以认为是对数正态分布。此功能代表整体模型行为。数值实现和逻辑曲线之间缺乏统计差异,这反过来表明广义中心极限定理(GCLT)适用于我们的案例研究。此外,发现使用两种气候输入获得的预测在年际和年内时间步类似,在90%的气候情况下,均方根和归一化偏差值均低于10%的可接受水平。两种方法的预测观察到的交货时间也相似。鉴于(i)作物模型的数学表述,(ii)CLT和GLTC分别对气候输入和模型输出的适用性,以及(iii)预测能力的等效性,可以得出结论,两种方法在产量预测方面同样有效。这些观察结果表明,在该案例研究中可以应用定律定理。出于纯粹的预测目的,研究结果偏向于基于平均气候方法的算法,该方法与随机方法相比,在相同的预测提前时间上运行和收敛所需的时间要少得多(300倍)。 (C)2015 Elsevier B.V.保留所有权利。

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