Prediction of Severe Epidemics of Chickpea Ascochyta Blight Using Weather Variables

Q1 Agricultural and Biological Sciences
Legume Science Pub Date : 2024-03-08 DOI:10.1002/leg3.218
Bita Naseri, Farshid Mahmodi
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Abstract

Chickpea production is threatened by severe epidemics of Ascochyta blight occurring in main chickpea growing lands under appropriate weather conditions worldwide. In this 4-year research, occurrence of Ascochyta blight was monitored across nine main chickpea growing areas of Kermanshah province, western part of Iran. Each year, commercial chickpea fields were studied on a weekly basis from March to June. Disease data were collected as disease incidence (percentage of infected plants) and severity (percentage of infected tissues) and occurrence of epidemics. Weather data were collected as air temperature, rainfall, and relative humidity (RH) on a daily basis. According to a factor analysis, which explained 83% of data variance, 13 weather predictors were selected to estimate disease epidemics developed across different areas. Before modeling, a principal component analysis determined predictive values for these selected weather variables. Then, eight predictors of rainy days in March and April, mean RH in February, mean minimum temperature in January–March–April, and rainfalls in May and June were involved in model based on their predictive values. Current findings advanced our knowledge on the best weather predictors of severe epidemics of Ascochyta blight in chickpea crops at large scale.

Abstract Image

利用气象变量预测鹰嘴豆赤霉病的严重流行情况
在全世界主要鹰嘴豆种植区,在气候适宜的条件下,鹰嘴豆疫病的严重流行威胁着鹰嘴豆的生产。在这项为期 4 年的研究中,对伊朗西部克尔曼沙阿省的 9 个鹰嘴豆主产区的 Ascochyta 枯萎病发生情况进行了监测。每年 3 月至 6 月,每周都对商业鹰嘴豆田进行研究。收集的病害数据包括发病率(受感染植株的百分比)和严重程度(受感染组织的百分比)以及流行病发生情况。每天收集的天气数据包括气温、降雨量和相对湿度(RH)。通过因子分析(解释了 83% 的数据方差),选出了 13 个天气预测因子,用于估计不同地区的病害流行情况。在建立模型之前,通过主成分分析确定了这些选定天气变量的预测值。然后,根据预测值,将 3 月和 4 月的雨日、2 月的平均相对湿度、1 月-3 月-4 月的平均最低气温以及 5 月和 6 月的降雨量等 8 个预测因子纳入模型。目前的研究结果增进了我们对鹰嘴豆作物Ascochyta枯萎病大面积严重流行的最佳天气预测因素的了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Legume Science
Legume Science Agricultural and Biological Sciences-Plant Science
CiteScore
7.90
自引率
0.00%
发文量
32
审稿时长
6 weeks
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