中国农业气象 ›› 2026, Vol. 47 ›› Issue (3): 456-472.doi: 10.3969/j.issn.1000-6362.2026.03.012

• 农业生态数据栏目 • 上一篇    下一篇

1981−2022年中国主要作物产量数据集的研制

高静,廖捷,刘媛媛   

  1. 国家气象信息中心,北京 100081
  • 收稿日期:2025-02-05 出版日期:2026-03-20 发布日期:2026-03-17
  • 作者简介:高静,E-mail:gaojing@cma.cn
  • 基金资助:
    2025年乡村振兴气象服务专项项目(2025101010YE050)

Development of Crop Yield Dataset for China from 1981 to 2022

GAO Jing, LIAO Jie, LIU Yuan−yuan   

  1. National Meteorological Information Center, Beijing 100081, China
  • Received:2025-02-05 Online:2026-03-20 Published:2026-03-17

摘要:

基于1981−2012年全国653个国家级农业气象观测站纸质年报表及2013−2022年电子年报,连续开展小麦、水稻、玉米、油菜、棉花、大豆和花生7类主要作物产量观测的618个站点数据,通过作物名称及观测项目标准化、缺失数据补录、资料序列统一、数据单位统一、元数据统一、质量控制和数据评估等处理流程,研制1981−2022年中国主要作物产量数据集,以期为农业气候变化相关研究提供基础数据支撑。结果表明:7类作物实际产量的5个观测项目数据实际观测量占应有观测量(实有率)的91.0%以上,数据正确率>97.0%。产量因素20个观测项目的数据实有率除小麦越冬死亡率外,其他观测项目均>78.8%,所有观测项目正确率>97.0%。产量结构60个观测项目数据实有率>88.6%,数据正确率>90.2%对实有率较低的小麦越冬死亡率和玉米双穗率开展核查,部分零值数据被视为缺测值,通过数据订正使小麦越冬死亡率数据实有率从12.2%升61.7%,玉米双穗率数据实有率从52.8%升95.9%该数据集为农业气候变化研究、生态与农业气象业务、防灾减灾策略制定、农业气候资源区划等提供统一标准与高质量的基础支撑数据,数据集研制过程中采用的综合质量控制方法,可为农业气象资料质量提升提供科学依据。

关键词: 作物数据集, 实际产量, 产量结构, 产量因素, 质量控制

Abstract:

This study utilized paperbased annual reports (19812012) and electronic annual reports (20132022) from 653 national agrometeorological stations across China. Data from 618 stations with continuous yield observations for seven major cropswheat, rice, maize, oilseed rape, cotton, soybean and peanut were selected. A comprehensive processing workflowincluding standardization of crop names and observation items, imputation of missing values, data series alignment, unit and metadata harmonization and rigorous quality control and validation was applied to develop a highquality dataset of major crop yields in China for 19812022, supporting agricultural climate change research. Results showed that the data availability rate for actual yield observations exceeded 91.0% across all crops, with the accuracy rate >97.0%. Among the 20 yield factor variables, all except winter wheat overwintering mortality rate had availability rates >78.8%, and all exhibited accuracy rate >97.0%. For the 60 yield structure variables, availability rate was >88.6% and accuracy rate exceeded 90.2%. Targeted data correction significantly improved data reporting rates: winter wheat overwintering mortality increased from 12.2% to 61.7%, and maize doubleear rate rose from 52.8% to 95.9%. This dataset provides standardized, highquality baseline data for agroecological studies, climate change research, disaster risk reduction, and agricultural climatic zoning. The comprehensive quality control framework established in this study offers valuable insights for enhancing the quality of agrometeorological datasets.

Key words: Crop dataset, Actual yield, Yield structure, Yield factor, Quality control