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首页> 外文期刊>Food Control >A multiple crop model ensemble for improving broad-scale yield prediction using Bayesian model averaging
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A multiple crop model ensemble for improving broad-scale yield prediction using Bayesian model averaging

机译:一种通过贝叶斯模型平均改善宽尺寸产量预测的多作物模型集合

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摘要

Process-based crop models are popular tools to evaluate the impact of climate change and agricultural management on crop growth. Accurate simulation of crop production over large geographic regions using an individual crop model remains challenging due to different sources of uncertainty. We present a Bayesian model averaging (BMA) method for a multiple crop-growth model ensemble to provide more reliable predictions of maize yields in Liaoning Province, northeastern China, which covers an area of 148,000 km(2) and has 2200,000 ha of maize. We apply the photosynthesis-oriented WOFOST (WOrld FOod STudy) model, the water oriented AquaCrop model and the nitrogen-oriented DNDC (DeNitrification and DeComposition) model to independently generate original predictions of county-level maize yields. The integrated prediction is achieved using a linear combination of the three ensemble members using BMA weights. This integrated approach results in more accurate and precise predictions than any individual model over the entire province. This is because the BMA framework effectively compensates for the uncertainty of individual model simulation and takes advantage of each competing model for reliable prediction. Furthermore, the interpretation of the BMA weight values is also strengthened by comparison with regional precipitation, fertilization and radiation data. We find these values adequately fit the regional limiting factors, e.g., the AquaCrop model generally has a high weight value in counties with frequent droughts, while WOFOST is the dominant member in areas with radiation deficit. Compared with the simple average method and median estimate, the results show that the BMA framework is powerful in computing the ensemble weights and interpreting the mechanism beyond the observed data.
机译:基于过程的作物模型是普遍的工具,以评估气候变化和农业管理对作物生长的影响。由于不同的不确定性来源,使用单个作物模型的大型地理区域对大型地理区域的作物产量进行准确模拟。我们为多种作物 - 增长模型集合提供了一种贝叶斯模型平均(BMA)方法,以提供中国东北辽宁省玉米产量的更可靠预测,占地面积148,000公里(2),拥有220万公顷玉米。我们应用了面向光合作用的Wofost(世界粮食研究)模型,水导向水上型模型和施氮的DNDC(脱氮和分解)模型,独立地产生了县级玉米产量的原始预测。使用使用BMA权重的三个集合构件的线性组合实现了集成预测。这种综合方法导致比整个省份的任何个人模型更准确和精确的预测。这是因为BMA框架有效地补偿了各种模型仿真的不确定性,并利用了每个竞争模型以获得可靠的预测。此外,通过与区域降水,施肥和辐射数据进行比较,还加强了BMA重量值的解释。我们发现这些值充分符合区域限制因素,例如,Aquacrop模型通常具有频繁干旱的县的重量值,而Wofost是辐射缺陷区域的主导成员。与简单的平均方法和中位数估计相比,结果表明,BMA框架在计算集合权重和解释超出观察数据之外的机制方面是强大的。

著录项

  • 来源
    《Food Control》 |2017年第2017期|共11页
  • 作者单位

    Tsinghua Univ Key Lab Earth Syst Modeling Dept Earth Syst Sci Beijing Peoples R China;

    Tsinghua Univ Key Lab Earth Syst Modeling Dept Earth Syst Sci Beijing Peoples R China;

    Tsinghua Univ Key Lab Earth Syst Modeling Dept Earth Syst Sci Beijing Peoples R China;

    Tsinghua Univ Key Lab Earth Syst Modeling Dept Earth Syst Sci Beijing Peoples R China;

    Tsinghua Univ Key Lab Earth Syst Modeling Dept Earth Syst Sci Beijing Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 食品工业;
  • 关键词

    BMA; Crop model; Maize; Uncertainty; Accurate and precise; Weights;

    机译:BMA;作物模型;玉米;不确定性;准确和精确;重量;

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