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两种中国稻穗瘟病发病预测模型的建立。

Development of Two Early Forecasting Models for Predicting Incidence of Rice Panicle Blast in China.

机构信息

Department of Plant Pathology at China Agricultural University (Ph.D. student), Beijing 100193, China.

National Agricultural Technology Extension and Service Center, Beijing 100125, China.

出版信息

Phytopathology. 2023 Mar;113(3):448-459. doi: 10.1094/PHYTO-08-22-0311-R. Epub 2023 Mar 23.

Abstract

Early forecasting of rice panicle blast is critical to the management of rice blast. To develop early forecasting models for rice panicle blast, the relationship between the seasonal maximum incidence of rice panicle blast () and the in the preceding crop, weather conditions, location, and acreage of susceptible varieties was analyzed. Results revealed that in the preceding crop, acreage of the susceptible varieties in class (), altitude, weather conditions 120 to 180 days before the PBx date (dbPBx) and 30 to 90 dbPBx were significantly correlated with the . Subsequently, a logistic model and a two-step hurdle model were developed to predict rice panicle blast. The logistic model was developed to predict whether the was 0 or not based on the preceding , altitude, acreage of susceptible varieties, the longest stretch of days with soil temperatures between 16 and 24°C for the period 120 to 150 dbPBx, and the longest stretch of rainy days in the period 120 to 180 dbPBx. The hurdle model predicted if the was greater than 0 at the first step, and if the prediction was greater than 0, then a regression model was developed for predicting based on the preceding , , altitude, and weather data 180 to 30 dbPBx. Validation with the test datasets showed that the logistic model could correctly predict whether was 0 at a mean test accuracy of 78.39% and that the absolute prediction error of by the two-step hurdle model was smaller than 6.16% for 90% of the records. The model developed in this study will be helpful in management decisions for rice growers and policy makers and offer a useful basis for further studies on the epidemiology and forecasting of rice panicle blast.

摘要

早稻穗瘟的预测对于稻瘟病的防治至关重要。为了建立早稻穗瘟的早期预测模型,分析了稻穗瘟季最大发病率()与前茬菌量、气象条件、地理位置和感病品种面积的关系。结果表明,前茬菌量、感病品种面积()、海拔高度、120 至 180 天 PBx 日期前(dbPBx)和 30 至 90 dbPBx 的气象条件与呈显著相关。随后,建立了逻辑斯蒂模型和两步门限模型来预测稻穗瘟。逻辑斯蒂模型是基于前茬、海拔高度、感病品种面积、120 至 150 dbPBx 期间土壤温度在 16 至 24°C 之间最长持续天数以及 120 至 180 dbPBx 期间最长持续降雨天数,来预测是否为 0。门限模型预测是否在第一步中大于 0,如果预测大于 0,则在前茬、、海拔高度和 180 至 30 dbPBx 期间的气象数据的基础上建立回归模型来预测。利用测试数据集进行验证表明,逻辑斯蒂模型能够以 78.39%的平均测试准确率正确预测是否为 0,两步门限模型的绝对预测误差对于 90%的记录小于 6.16%。本研究建立的模型将有助于稻农和决策者的管理决策,并为进一步研究稻穗瘟的流行病学和预测提供有用的基础。

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