中国农业气象 ›› 2023, Vol. 44 ›› Issue (01): 36-46.doi: 10.3969/j.issn.1000-6362.2023.01.004

• 农业生物气象栏目 • 上一篇    下一篇

区域粮食产量因灾损失评估之内蒙古自治区灾情−产量模型构建

朱永昶,刘布春,刘园,SHIRAZI zeeshan-sana   

  1. 1. 中国农业科学院农业环境与可持续发展研究所/作物高效用水与抗灾减损国家工程实验室/农业农村部农业环境重点实验室,北京 100081;2. 中国气象局气象发展与规划院,北京 100081
  • 收稿日期:2022-01-15 出版日期:2023-01-20 发布日期:2023-01-16
  • 通讯作者: 刘布春,研究员,主要从事农业减灾研究,E-mail: liubuchun@caas.cn
  • 作者简介:朱永昶,E-mail: zhuyongchangcma@126.com
  • 基金资助:
    中国农业科学院科技创新工程协同创新任务(CAAS-XTCX2018023);中国农业科学院科技创新工程(CAAS-ASTIP-2014-IEDA)

Assessment Regional Grain Yield Loss- Formulation of Agrometeorological Disaster-Yield Model of Inner Mongolia Autonomous Region

ZHU Yong-chang, LIU Bu-chun, LIU Yuan, SHIRAZI Zeeshan-Sana   

  1. 1.Institute of Environment and Sustainable Development in Agriculture, CAAS/National Engineering Laboratory of Efficient Crop Water Use and Disaster Reduction/Key Laboratory of Agricultural Environment, Ministry of Agriculture and Rural Affairs, Beijing 100081,China; 2.CMA Institute for Development and Programmer Design, Beijing 100081
  • Received:2022-01-15 Online:2023-01-20 Published:2023-01-16

摘要: 基于1981−2020年内蒙古自治区农业气象灾害灾情及该地区粮食作物播种面积和产量数据,构建灾情−粮食作物产量评估模型,并对该模型进行验证,以此估算该地区粮食作物因灾减产量。结果表明:(1)1981−2020年内蒙古自治区粮食作物播种面积、总产和单产均呈显著上升趋势,增速分别为74.48×103hm2·a−1、78.85×104t·a−1和100.97kg·hm−2·a−1。(2)1981-2020年内蒙古农业气象灾害受灾、成灾面积均呈先上升后下降趋势,同期全国农业气象灾害成灾和受灾面积亦呈先上升后下降趋势。(3)干旱是该地区最主要的农业气象灾害,其受灾和成灾面积分别占历年各灾种的总受灾和成灾面积的64.10%和62.45%。灰色关联度分析表明,在受灾率和成灾率水平上干旱是与粮食单产关联度最高的农业气象灾害,在绝收率水平上风雹与粮食单产关联度最高。(4)构建的灾情-粮食作物产量评估模型模拟准确率较高,其模拟粮食产量与实际粮食产量呈极显著相关(R2=0.99,P<0.01),历年模拟平均相对误差为0.20%,翌年试报相对误差为2.49%。(5)1981-2020年内蒙古自治区粮食因灾损失率呈极显著下降趋势(R2=0.77,P<0.01),降速为0.48个百分点·a−1,平均因灾损失率为14.79%,68.42%的年份粮食单产因灾损失率高于10%。综上分析,基于1981-2020年统计数据构建的内蒙古自治区灾情−粮食作物产量评估模型可以较好地模拟和预测粮食作物产量、评估粮食产量因灾损失,从而满足农业气象业务和服务的需要。

关键词: 粮食安全, 农业气象灾害, 灾情, 因灾损失评估模型

Abstract: The aim of this paper is to assess the loss of grain production caused by agrometeorological disasters in the Inner Mongolia Autonomous Region (IMAR), which is an important grain production base of China. The disaster-yield assessment model was formed and verified using grain production, yield, planting area and agrometeorological disaster conditions data of the IMAR from 1981 to 2020, and the loss of grain yield caused by meteorological disasters was assessed by this model. The results showed that grain production, yield and planting area observed an escalating trend from 1981 to 2020, and the rate of increase was 78.85×104t·y−1, 100.97kg·ha−1·y−1 and 74.48×103ha−1·y−1. The covered and affected area of agrometeorological disasters for the IMAR and National both increased and then decreased during the 1981-2020 period. Drought was the most important agrometeorological disaster in the IMAR, and the covered and affected area was 64.10% and 62.45%, respectively, accounting the total covered and affected area of all kinds of disasters in 1981−2020. The grey correlation analysis showed that drought had the highest correlation with grain yield at the level of disaster covered and affected rate, and hail had the highest correlation with grain yield at the level of disaster destory rate. The disaster-yield assessment model constructed by this study was of high simulation accuracy, and the linear regression coefficients (R2) and the slop between the simulated and measured grain yield was 0.99 and 0.98, respectively (P < 0.01). The average relative simulation yield was 0.20% and relative simulation error of the following year grain yield was 2.49%. Grain yield loss rate due to disaster in the IMAR decreased (R2=0.77,P<0.01) from 1981 to 2020 with a rate of 0.48 percentage points·y−1, and average grain yield loss rate was 14.79% and there were 68.42% of years which grain yield loss rate above 10%. The disaster-yield assessment model of the IMAR formulated in this study can simulate and predict grain yield, and assess the loss of grain yield due to disasters, which can meet the needs of agrometeorological services.

Key words: Food security, Agrometeorological disasters, Condition of disaster, Disaster-yield loss model