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Quantifying uncertainty in crop model predictions due to the uncertainty in the observations used for calibration

机译:由于用于校准的观测值的不确定性,量化作物模型预测中的不确定性

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Despite modellers are paying increasing attention to analyse and manage the different sources of uncertainty affecting model predictions, the impact of the uncertainty in the observations used for calibration has been ignored. This study proposes a methodology for its quantification and provides an illustrative case study with data collected in two field experiments where rice was grown under flooded conditions in northern Italy in 2002 and 2004. Latin hypercube sampling was used to generate virtual series of observations from the mean and standard deviation of aboveground biomass values collected during the season in the two experiments. Each of the generated series was then used to calibrate the parameters maximum radiation use efficiency and optimum temperature for growth of the WARM model by means of the simplex optimization algorithm. The analysis of the distribution of key outputs (aboveground and panicle biomass at harvest) and of agreement metrics revealed that the impact of uncertainty in the observations used for calibration (explored here running calibration experiments for each of the generated series) can be large. The difference between maximum and minimum aboveground biomass at maturity was 2.79 t ha(-1) and 3.78 t ha(-1) for the datasets collected in 2004 and 2002, respectively. Corresponding values for panicle biomass were 0.97 t ha(-1) and 2.36 t ha(-1). In all cases, model outputs were normally distributed. Large differences were achieved also in the values of the agreement metrics, with RRMSE ranging from 13.64% to 36.22% and from 8.04% to 29.97% for the 2004 and 2002 datasets. The methodology proposed - although applicable to a variety of models and domains - deals only with the uncertainty due to random errors, which could derive, e.g. from non-representative sampling or from the repeatability of the method used to determine the variable of interest. Other sources of uncertainty, like those involved with systematic errors, need to be addressed in further studies. This study highlighted the need for conceptual and mathematical frameworks where the different sources of uncertainty affecting model predictions can be analysed in an integrated way. (C) 2016 Elsevier B.V. All rights reserved.
机译:尽管建模人员越来越重视分析和管理影响模型预测的不确定性的不同来源,但忽略了不确定性在用于校准的观测结果中的影响。这项研究提出了一种量化方法,并提供了一个示例性案例研究,其数据是通过两次田间试验收集的数据进行的,其中水稻在2002年和2004年意大利北部的洪灾条件下进行种植。两次实验在该季节收集的地上生物量值的标准偏差。然后,通过单纯形优化算法,将每个生成的序列用于校准WARM模型的最大辐射使用效率和最佳温度参数。对关键产出(收获时的地面和穗生物量)的分布和协议指标的分析表明,用于校准的观测结果的不确定性影响(此处针对每个生成的序列进行校准实验进行了研究)可能很大。 2004年和2002年收集的数据集,成熟时最大和最小地上生物量之间的差异分别为2.79 t ha(-1)和3.78 t ha(-1)。穗生物量的相应值为0.97 t ha(-1)和2.36 t ha(-1)。在所有情况下,模型输出都是正态分布的。协议指标的值也实现了很大的差异,对于2004和2002年的数据集,RRMSE的范围从13.64%到36.22%,从8.04%到29.97%。所提出的方法虽然适用于各种模型和领域,但仅处理由于随机误差引起的不确定性,而这种随机误差可衍生出例如。来自非代表性采样或用于确定目标变量的方法的可重复性。其他不确定性来源,例如与系统错误有关的不确定性,需要进一步研究。这项研究强调了对概念和数学框架的需求,在这些框架中可以以综合方式分析影响模型预测的不确定性的不同来源。 (C)2016 Elsevier B.V.保留所有权利。

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