中国农业气象 ›› 2025, Vol. 46 ›› Issue (5): 652-659.doi: 10.3969/j.issn.1000-6362.2025.05.006

• 农业生物气象栏目 • 上一篇    下一篇

气象条件对天柱县烟草靶斑病的影响及模拟模型构建

唐辟如,孙思思,曾晓珊,柳强,崔蕾,杨颜   

  1. 1.贵州省山地气象科学研究所,贵阳 550081;2.贵州省生态与农业气象中心,贵阳 550081;3.贵州省烟草公司黔东南州公司,凯里 556000
  • 收稿日期:2024-06-21 出版日期:2025-05-20 发布日期:2025-05-14
  • 作者简介:唐辟如,E-mail:350337780@qq.com
  • 基金资助:
    中国烟草总公司贵州省公司科技项目(2021XM16)

Meteorological Conditions Impact on Tobacco Target Spot Disease in Tianzhu County and Simulation Model Construction

TANG Pi-ru, SUN Si-si, ZENG Xiao-shan, LIU Qiang, CUI Lei, YANG Yan   

  1. 1.Guizhou Mountainous Meteorological Science Research Institute, Guiyang 550081, China; 2.Guizhou Ecological Meteorology and Agrometeorology Center, Guiyang 550081; 3.Guizhou Tobacco Company Qiandongnan Tobacco Branch Company, Kaili 556000
  • Received:2024-06-21 Online:2025-05-20 Published:2025-05-14

摘要:

基于20222023年贵州省天柱县平甫烟区烟草靶斑病观测数据及气象资料,分析靶斑病病情指数、病株率与气象因子的相关性,筛选关键因子,利用支持向量机(SVM)和多元线性回归分析法构建烟区靶斑病的模拟模型并对其验证,以期了解烟草靶斑病发生发展规律,为烟草生产提高依据。结果表明:(1)贵州天柱县平甫村烟区烟草靶斑病始发期在5月底6月上旬,随后病情指数和病株率呈波动上升,7月中旬进入发病盛期。(2)影响天柱县烟草靶斑病的关键气象因子为病害调查日15d平均地温、前30d累计降水量和前15d平均相对湿度,与烟草靶斑病的病情指数和病株率呈显著正相关,即病害调查日前15~30d土壤温度高,降水量偏多,空气相对湿度大,烟草靶斑病发病越重,田间传播速度越快。(3)基于上述关键气象因子建立烟草靶斑病多元线性回归模型和SVM模型,模型平均拟合度R2分别为0.950.93,模拟效果较好,检验表明,病情指数模拟中多元线性回归模型的平均准确率为87%,高于SVM模型的75%,病株率模拟中多元线性回归模型的平均准确率为80%,高于SVM模型的73%,多元线性回归模型模拟结果优于非线性模型SVM,即多元线性回归模型更适用于模拟烟草靶斑病病情的发生发展。

关键词: 烟草, 靶斑病, 气象因子, 支持向量机, 多元线性回归

Abstract:

 In recent years, climate change has had a significant impact on agricultural ecosystems, particularly on crop diseases. To further understand the effects of early meteorological factors on tobacco target spot disease, this study collected data of tobacco target spot disease index and diseased plant rate in the Tianzhu county Pingpu city tobacco region from 2022 to 2023, collected early meteorological data to analyze correlations between the tobacco target spot disease index, diseased plant rate and the meteorological factors affecting them, the key factors were screened. The support vector machine (SVM) model and multiple regression models was established to simulation model of the tobacco target spot disease and validate, respectively. The results showed that: (1) the initial outbreak of tobacco target spot disease in the tobacco-growing area of Pingfu village, Tianzhu county, Guizhou province was from the end of May to the first ten days of June. This was followed by a fluctuating increase in both disease index and disease incidence, culminating in a peak period of incidence in midJuly. (2)The key meteorological factors influencing tobacco target spot disease include the average ground temperature 15 days prior to the disease survey date, the cumulative precipitation 30 days prior, and the average relative humidity 15 days prior. These factors showed a significant positive correlation with both the disease index and disease incidence rate of tobaccotargeted endemic diseases.. Specifically, higher soil temperatures, greater precipitation, and increased relative humidity 1530 days prior to the date of disease investigation were associated with more severe outbreaks of tobacco target spot disease and a faster field transmission rate. (3) Based on the aforementioned key meteorological factors, a multiple linear regression model and an SVM model for tobacco target spot disease were established. The average fitting degrees (R2) of the two models were 0.95 and 0.93, respectively, indicating good simulation results. Upon testing, it was found that in the simulation of disease index, the average accuracy of the multiple linear regression model was 87%, higher than that of the SVM model, which was 75%. In the simulation of disease plant rate, the average accuracy of the multiple linear regression model was 80%, higher than that of the SVM model, which was 73%. The simulation results of the multi linear regression model outperform those of the nonlinear SVM model, indicating that the multilinear regression model is better suited to model the occurrence and development of tobaccotargeted scrofula. 

Key words: Tobacco, Target spot disease, Meteorological factor, Support vector machine, Multiple linear regression