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首页> 外文期刊>Theoretical and applied climatology >Evaluating the applicability of using daily forecasts from seasonal prediction systems (SPSs) for agriculture: a case study of Nepal's Terai with the NCEP CFSv2
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Evaluating the applicability of using daily forecasts from seasonal prediction systems (SPSs) for agriculture: a case study of Nepal's Terai with the NCEP CFSv2

机译:评估使用季节性预报系统(SPS)的每日预报在农业上的适用性:以NCEP CFSv2为例,尼泊尔特莱的案例研究

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摘要

Ensemble forecasts from dynamic seasonal prediction systems (SPSs) have the potential to improve decision-making for crop management to help cope with interannual weather variability. Because the reliability of crop yield predictions based on seasonal weather forecasts depends on the quality of the forecasts, it is essential to evaluate forecasts prior to agricultural applications. This study analyses the potential of Climate Forecast System version 2 (CFSv2) in predicting the Indian summer monsoon (ISM) for producing meteorological variables relevant to crop modeling. The focus area was Nepal's Terai region, and the local hindcasts were compared with weather station and reanalysis data. The results showed that the CFSv2 model accurately predicts monthly anomalies of daily maximum and minimum air temperature (T-max and T-min) as well as incoming total surface solar radiation (S-rad). However, the daily climatologies of the respective CFSv2 hindcasts exhibit significant systematic biases compared to weather station data. The CFSv2 is less capable of predicting monthly precipitation anomalies and simulating the respective intra-seasonal variability over the growing season. Nevertheless, the observed daily climatologies of precipitation fall within the ensemble spread of the respective daily climatologies of CFSv2 hindcasts. These limitations in the CFSv2 seasonal forecasts, primarily in precipitation, restrict the potential application for predicting the interannual variability of crop yield associated with weather variability. Despite these limitations, ensemble averaging of the simulated yield using all CFSv2 members after applying bias correction may lead to satisfactory yield predictions.
机译:来自动态季节预报系统(SPS)的整体预报具有改善作物管理决策的潜力,以帮助应对年际天气变化。由于基于季节性天气预报的农作物产量预报的可靠性取决于预报的质量,因此在农业应用之前评估预报至关重要。这项研究分析了气候预测系统版本2(CFSv2)在预测印度夏季风(ISM)中产生与作物模拟相关的气象变量的潜力。重点关注地区是尼泊尔的Terai地区,并将当地的后遗症与气象站和再分析数据进行了比较。结果表明,CFSv2模型可以准确预测每日最高和最低气温(T-max和T-min)以及进入的总表面太阳辐射(S-rad)的月度异常。但是,与气象站数据相比,各个CFSv2后预报的每日气候表现出明显的系统偏差。 CFSv2无法预测生长季节每月的降水异常和模拟各自的季节内变化。但是,观测到的每日降水气候属于CFSv2后代各自每日气候的整体分布。 CFSv2季节性预报中的这些局限性,主要是降水方面的局限性,限制了预测与天气多变相关的作物单产年际变化的潜在应用。尽管有这些限制,但在应用偏差校正后使用所有CFSv2成员对模拟产量进行整体平均可能会导致令人满意的产量预测。

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  • 来源
    《Theoretical and applied climatology》 |2019年第4期|1143-1156|共14页
  • 作者单位

    Ctr Euromediterraneo Cambiamenti Climat CMCC, Bologna, Italy;

    Ctr Euromediterraneo Cambiamenti Climat CMCC, Bologna, Italy;

    Ctr Euromediterraneo Cambiamenti Climat CMCC, Bologna, Italy;

    Ctr Euromediterraneo Cambiamenti Climat CMCC, Sassari, Italy;

    Ctr Euromediterraneo Cambiamenti Climat CMCC, Sassari, Italy;

    Univ Florida, Inst Sustainable Food Syst, Gainesville, FL USA|Univ Florida, Dept Agr & Biol Engn, Gainesville, FL USA;

    Univ Florida, Inst Sustainable Food Syst, Gainesville, FL USA|Univ Florida, Dept Agr & Biol Engn, Gainesville, FL USA;

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

    CFSv2; ISM; Nepal; Terai;

    机译:CFSv2;ISM;尼泊尔;Terai;

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