中国农业气象 ›› 2024, Vol. 45 ›› Issue (03): 281-292.doi: 10.3969/j.issn.1000-6362.2024.03.006

• 农业生物气象栏目 • 上一篇    下一篇

基于有效积温法改进婺源油菜花期预报模型

李春晖,张晓芳,蔡哲,陶瑶,田俊   

  1. 1.江西省农业气象中心,南昌 330096;2.江西省婺源县气象局,婺源 333200;3.江西省上饶市气象局,上饶 334000;4.江西省气象科学研究所,南昌 330096
  • 收稿日期:2023-05-08 出版日期:2024-03-20 发布日期:2024-03-13
  • 作者简介:李春晖,E-mail:674139482@qq.com
  • 基金资助:
    中国气象局创新发展专项(CXFZ2023J057);江西省气象科技面上项目(2023KJM032);南昌市农业气象重点实验室开放研究基金(2019NNZS101)

Improvement of Flowering Prediction Model of Rape in Wuyuan Based on Effective Integrated Temperature Method

LI Chun-hui,ZHANG Xiao-fang,CAI Zhe,TAO Yao,TIAN Jun   

  1. 1.Jiangxi Agricultural Meteorological Center, Nanchang 330096, China; 2.Wuyuan Meteorological Bureau of Jiangxi Province,Wuyuan 333200; 3.Shangrao Meteorological Bureau of Jiangxi Province, Shangrao 334000; 4.Meteorological Science Institute of Jiangxi Province, Nanchang 330096
  • Received:2023-05-08 Online:2024-03-20 Published:2024-03-13

摘要: 基于1995−2022年婺源油菜观测资料和气象资料,分别以油菜现蕾、抽薹为起点,利用多元线性回归方法对基于有效积温法的油菜花期预报模型进行改进,建立了基于有效积温法模拟预报的普花期与实际日期误差天数的气象因子模型,以提高婺源花期预报模型的精确度。利用模拟精度、均方根误差(RMSE)和相对误差(RE)对改进前后的模拟效果进行对比和评价。结果表明:(1)以0℃为有效积温阈值,以平均有效积温值为有效积温指标对油菜普花期进行初步预报,随普花期临近预报精度提高。(2)相关分析表明,气温是影响油菜普花期的主要气象因子,以2月中旬平均气温、最高气温和最低气温为自变量,以基于有效积温法模拟预报的普花期与实际日期的误差天数为因变量,建立的气象因子改进模型具有统计学意义且通过显著性检验。(3)分别对改进前后的预报模型进行检验和评价,两种方法建立的预报模型效果均较好,气象因子改进模型的模拟结果更优,提高了油菜普花期预报的准确度。以抽薹为起点的气象因子改进预报模型在油菜普花期预报方面精确度最高,可有效应用于油菜普花期预报。

关键词: 油菜, 花期预报模型, 有效积温法, 多元线性回归

Abstract: Based on the observational data of rape and meteorological data from 1995 to 2022 in Wuyuan, this study improved the rape flowering prediction model based on effective integrated temperature method. Starting with the date of rape budding and bolting, a multivariate linear regression approach was employed to enhance the prediction model. A meteorological factor model was established to predict the deviation in days between the simulated general flowering date based on effective integrated temperature method and the actual date, aiming to enhance the accuracy of rape flowering prediction model in Wuyuan. The improved and original models were compared and evaluated using simulation accuracy, root mean square error (RMSE), and relative error (RE). The results indicated that: (1)using 0°C as the threshold for effective integrated temperature and the average effective integrated temperature as the indicator, the preliminary prediction of the general flowering date of rape was performed, and the prediction accuracy improved as the flowering period approached. (2)Correlation analysis revealed that temperature was the primary meteorological factor influencing the rape general flowering period. A meteorological factor improvement model was established using mid-February average temperature, maximum temperature, and minimum temperature as independent variables and the deviation in days between the simulated general flowering date based on effective integrated temperature method and the actual date as the dependent variable. This model demonstrated statistical significance and passed the significance tests. (3)The evaluation of the prediction models before and after improvement showed that both methods yielded good prediction results. However, the meteorological factor improvement model produced superior simulation results, enhancing the accuracy of rape general flowering prediction model. The meteorological factor improvement prediction model, starting from the bolting, exhibited the highest accuracy in predicting the general flowering date of rape and can be effectively applied for rape flowering prediction.

Key words: Rape, Flowering prediction model, Effective integrated temperature method, Multiple linear regression