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Pricing weather index insurance based on artificial controlled experiment: a case study of cold temperature for early rice in Jiangxi, China

机译:基于人工对照实验的定价天气指标保险 - 以江西江西早稻寒冷寒温案例研究

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摘要

The growth of early rice is often threatened by a phenomenon known as Grain Buds Cold, a period of anomalously cold temperatures during the booting and flowering stage. As a high yield loss due to Grain Buds Cold will lead to increasing insurance premiums, quantifying the impact of weather on crop yield is crucial to the design of weather index insurance. In this study, we propose a new approach to the estimation of premium rates of Grain Buds Cold weather index insurance. A 2-year artificial controlled experiment was utilized to develop logarithmic and linear yield loss models. Additionally, incorporating 51 years of meteorological data, an information diffusion model was used to calculate the probability of different durations of Grain Buds Cold, ranging from 3 to 20 days. The results show that the pure premium rates determined by a logarithmic yield loss model exhibit lower risk and greater efficiency than those determined by a linear yield loss model. The premium rates of Grain Buds Cold weather index insurance were found to fluctuate between 7.085 and 10.151% at the county level in Jiangxi Province, while the premium rates based on the linear yield loss model were higher (ranging from 7.787 to 11.672%). Compared with common statistical methods, the artificial controlled experiment presented below provides a more robust, reliable and accurate way of analyzing the relationship between yield and a single meteorological factor. At the same time, the minimal data requirements of this experimental approach indicate that this method could be very important in regions lacking historical yield and climate data. Estimating weather index insurance accurately will help farmers address extreme cold weather risk under changing climatic conditions.
机译:早稻的生长通常被称为籽粒芽的现象,在引导和开花阶段期间的异常寒冷的时期。由于谷物芽引起的高产损失会导致保险费增加,量化天气对作物产量的影响至关重要,对天气指数保险的设计至关重要。在这项研究中,我们提出了一种新方法来估算谷物芽寒天气指数保险的溢价率。利用2年的人工控制实验来开发对数和线性屈服损失模型。另外,包含51年的气象数据,使用信息扩散模型来计算液体芽的不同持续时间的概率,范围为3至20天。结果表明,由对数屈服模型确定的纯溢流率表现出低的风险和更高的效率,而不是线性屈服损失模型确定的效率。江西省县级的粮食芽寒天气指数保险的溢价率在7.085%至10.151%之间,而基于线性屈服损失模型的溢价率较高(从7.787到11.672%)。与常见的统计方法相比,下面提出的人工对照实验提供了一种更稳健,可靠和准确的方式,可分析产量与单一气象因子之间的关系。同时,这种实验方法的最小数据要求表明这种方法在缺乏历史产量和气候数据的地区中可能是非常重要的。准确估算天气指数保险将帮助农民在不断变化的气候条件下解决极端寒冷的天气风险。

著录项

  • 来源
    《Natural Hazards》 |2018年第1期|共20页
  • 作者单位

    Nanjing Univ Informat Sci &

    Technol Key Lab Meteorol Disaster Minist Educ KLME CIC FEMD Joint Int Res Lab Climate &

    Environm Change ILCEC Nanjing 210044 Jiangsu Peoples R China;

    Nanjing Univ Informat Sci &

    Technol Key Lab Meteorol Disaster Minist Educ KLME CIC FEMD Joint Int Res Lab Climate &

    Environm Change ILCEC Nanjing 210044 Jiangsu Peoples R China;

    Chinese Acad Sci Inst Geog Sci &

    Nat Resources Res State Key Lab Resources &

    Environm Informat Syst Beijing 100101 Peoples R China;

    Nanjing Univ Informat Sci &

    Technol Key Lab Meteorol Disaster Minist Educ KLME CIC FEMD Joint Int Res Lab Climate &

    Environm Change ILCEC Nanjing 210044 Jiangsu Peoples R China;

    Nanjing Univ Informat Sci &

    Technol Key Lab Meteorol Disaster Minist Educ KLME CIC FEMD Joint Int Res Lab Climate &

    Environm Change ILCEC Nanjing 210044 Jiangsu Peoples R China;

    Nanjing Univ Informat Sci &

    Technol Key Lab Meteorol Disaster Minist Educ KLME CIC FEMD Joint Int Res Lab Climate &

    Environm Change ILCEC Nanjing 210044 Jiangsu Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 天文学、地球科学;
  • 关键词

    Early rice; Weather index insurance; Artificial controlled experiment; Grain Buds Cold;

    机译:早稻;天气指数保险;人工控制实验;谷物芽冷;

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