中国农业气象 ›› 2024, Vol. 45 ›› Issue (10): 1204-1215.doi: 10.3969/j.issn.1000-6362.2024.10.10

• 农业气象灾害 栏目 • 上一篇    下一篇

公里网格尺度的陕西冬小麦综合遥感指数保险产品设计

陈妍,薛子怡,王彤,王东,姬便便   

  1. 西北农林科技大学经济管理学院,杨凌 712100
  • 收稿日期:2023-11-16 出版日期:2024-10-20 发布日期:2024-10-17
  • 作者简介:陈妍,E-mail:yjssc2006@163.com
  • 基金资助:
    国家自然科学基金面上项目“扶贫信贷特惠政策退出情景下脱贫农户信贷行为变化与政策调适研究”(72273106);陕西省社会科学基金项目“陕西农村集体经济发展的金融支持及其模式研究”(2022R039);陕西省保险学会研究课题“陕西冬小麦完全成本保险设计与费率厘定研究”

Research on Insurance Design and Pricing of Comprehensive Remote Sensing Index of Shaanxi Winter Wheat at Kilometer Grid Scale

CHEN Yan, XUE Zi-yi, WANG Tong, WANG Dong, JI Bian-bian   

  1. School of Economics and Management, Northwest Agriculture & Forestry University, Yangling 712100, China
  • Received:2023-11-16 Online:2024-10-20 Published:2024-10-17

摘要:

基于遥感时序数据MOD13A2和陕西省99个气象站点的逐日气象数据,使用EVI差值法提取陕西冬小麦种植区,筛选与冬小麦单产相关性最高的遥感指数,结合冬小麦生育期内倒春寒、干旱、连阴雨以及干热风4个农业气象灾害的气象指标,构建综合遥感指数模型,以覆盖冬小麦全生育期的农业气象灾害风险。基于最优产量预测模型设计冬小麦综合遥感指数保险,采用分布拟合和蒙特卡洛模拟方法,计算10770个公里网格冬小麦综合遥感指数保险的理赔门槛值和精算纯费率,绘制理赔门槛地图和精算纯费率地图。结果表明:(1)采用EVI差值法提取冬小麦种植区,不同区域使用不同差值时段和门槛值,可获得较高提取精度,县域提取面积与2020年实际播种面积的相关系数达0.997,平均绝对误差524.9 hm²;(22000−2020年第6581EVI及两者最大值与陕西冬小麦单产相关性较高,县域相关系数年平均值最高达0.692;(3)融合干旱、连阴雨和倒春寒3个农业气象灾害的气象指标,最优综合遥感指数模型模拟单产与实际单产的相关系数达0.837,最优综合遥感指数模型R²为0.602;(4)关中、陕南部分地区冬小麦种植风险较低,平均单产损失率低于2%,渭河与黄河交口处冬小麦种植风险较高,平均单产损失率高于4%,其余地区冬小麦种植风险介于两者之间。冬小麦单产和种植风险在县域以下区域存在较大空间差异,提高测算理赔门槛和精算纯费率的空间精度,能够使冬小麦高产地区和低产地区获得同样的赔付机会,避免赔付超过实际损失导致的道德风险,同时能够使费率与实际种植风险相匹配,增加费率公平性,提高低风险地区参保意愿,减少逆选择。

关键词: 遥感指数保险, 冬小麦, 费率厘定, EVI

Abstract:

Based on the MOD13A2 time series remote sensing data and daily meteorological data from 99 meteorological stations in Shaanxi province, the winter wheat planting area in Shaanxi was extracted using the EVI differencing method. The remote sensing index most correlated with winter wheat yield was selected and combined with meteorological indicators for agricultural meteorological disasters such as late spring frosts, drought, continuous rainy days, and hot dry winds during the winter wheat growth period to construct a comprehensive remote sensing index model to cover the agricultural meteorological disaster risk throughout the entire winter wheat growth period. A comprehensive remote sensing index insurance for winter wheat was designed based on the optimal yield prediction model. Using distribution fitting and Monte Carlo simulation methods, the claim threshold and actuarial pure premium rate for 10770 grid cells of winter wheat comprehensive remote sensing index insurance were calculated, and claim threshold maps and actuarial pure premium rate maps were generated. The results showed that: (1) using the EVI differencing method to extract the winter wheat planting area, different time periods and thresholds were used in different regions to achieve higher accuracy, with a correlation coefficient of 0.997 between the extracted area at the county level and the actual planting area in 2020, with an average absolute error of 524.9ha. (2) The EVI on the 65th and 81st days of 2000−2020 and their maximum values were highly correlated with the single yield of Shaanxi winter wheat, with a highest county-level average correlation coefficient of 0.692. (3) After integrating the meteorological indicators of drought, continuous rainy days, and late spring frosts, the optimal comprehensive remote sensing index model predicted a correlation coefficient of 0.837 between simulated and actual yield, with an R² of 0.602 for the optimal comprehensive remote sensing index model. (4) The risk of winter wheat planting in some areas of Guanzhong and southern Shaanxi was relatively low, with an average yield loss rate of less than 2%, while the risk of winter wheat planting at the junction of the Wei river and the Yellow river was higher, with an average yield loss rate of over 4%, and in other areas, the risk of winter wheat planting ranged between these two extremes. There were significant spatial differences in winter wheat yield and planting risk below the county level. Improving the spatial accuracy of calculating claim thresholds and actuarial pure premium rates can ensure that high-yield and low-yield areas have equal compensation opportunities, avoid moral hazards caused by paying more than actual losses, match rates with actual planting risks, increase rate fairness, enhance the willingness of low-risk areas to be insured, and reduce adverse selection.

Key words: Remote sensing index insurance, Winter wheat, Rate setting, EVI