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Development of weather-based prediction models for leaf rust in wheat in the Indo-Gangetic plains of India

机译:基于天气的印度-印度洋平原小麦叶锈病预测模型的开发

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Weather based prediction models for leaf rust were developed using disease severity and weather data recorded at four locations viz. Ludhiana, Kanpur, Faizabad and Sabour of the All India Wheat and Barley Improvement Project. Weeks 7-9 of the crop growing season at Ludhiana, Faizabad and Sabour and weeks 10-12 at Kanpur were identified as critical periods for relating weather variables to disease. Highly significant correlation coefficients were found between disease severity and a greater number of weather variables in these critical 3-week periods than at other times. The correlation coefficients were greatest for the Humid Thermal Ratio (HTR), Maximum Temperature (MXT) and Special Humid Thermal Ratio (SHTR), and these three weather variables were selected as predictor variables. Linear regressions with these predictor variables (individually) during the critical periods, and a multiple regression with MXT and relative humidity (RH), serve as four disease prediction models, with sufficient lead-time to take control measures. Validation of these prediction models with independent disease severity data showed that the regression equation with MXT (Model-1) was the best among the prediction models, with four out of six simulations matching observed disease severity classes and also having lowest residual sum of squares (SSE) value of 2727. Models 4 (multiple regression), 2 (HTR) and 3 (SHTR) with SSE values of 2881, 3092 and 3732, respectively are in order of decreasing accuracy of prediction. The model using MXT can be used to predict the disease severity in the Indo-Gangetic Plains and provide the basis for efficient disease control
机译:使用疾病严重程度和在四个位置记录的天气数据开发了基于天气的叶锈病预测模型。全印度小麦和大麦改良项目的Ludhiana,Kanpur,Faizabad和Sabour。在卢迪亚纳,费萨巴德和萨伯的农作物生长季节的第7-9周以及在坎普尔的第10-12周被确定为将天气变量与疾病联系起来的关键时期。与其他时间相比,在这些关键的3周时间内,疾病严重程度与更多天气变量之间发现了非常显着的相关系数。湿热比(HTR),最高温度(MXT)和特殊湿热比(SHTR)的相关系数最大,选择这三个天气变量作为预测变量。在关键时期使用这些预测变量(分别)进行线性回归,并使用MXT和相对湿度(RH)进行多元回归,可以作为四个疾病预测模型,并有足够的准备时间来采取控制措施。这些具有独立疾病严重性数据的预测模型的验证表明,在预测模型中,使用MXT(模型1)的回归方程是最好的,其中六分之四的模拟匹配观察到的疾病严重性类别,并且残差平方和最低( SSE)值为2727。模型4(多重回归),模型2(HTR)和模型3(SHTR)的SSE值分别为2881、3092和3732,是为了降低预测的准确性。使用MXT的模型可用于预测印度恒河平原的疾病严重程度,并为有效控制疾病提供基础

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