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一种基于阈值的冬小麦条锈病感染预测气象模型。

A Threshold-Based Weather Model for Predicting Stripe Rust Infection in Winter Wheat.

作者信息

El Jarroudi Moussa, Kouadio Louis, Bock Clive H, El Jarroudi Mustapha, Junk Jürgen, Pasquali Matias, Maraite Henri, Delfosse Philippe

机构信息

Department of Environmental Sciences and Management, Université de Liège, Arlon, B-6700 Belgium.

International Centre for Applied Climate Sciences, University of Southern Queensland, Toowoomba, QLD 4350 Australia.

出版信息

Plant Dis. 2017 May;101(5):693-703. doi: 10.1094/PDIS-12-16-1766-RE. Epub 2017 Mar 7.

Abstract

Wheat stripe rust (caused by Puccinia striiformis f. sp. tritici) is a major threat in most wheat growing regions worldwide, which potentially causes substantial yield losses when environmental conditions are favorable. Data from 1999 to 2015 for three representative wheat-growing sites in Luxembourg were used to develop a threshold-based weather model for predicting wheat stripe rust. First, the range of favorable weather conditions using a Monte Carlo simulation method based on the Dennis model were characterized. Then, the optimum combined favorable weather variables (air temperature, relative humidity, and rainfall) during the most critical infection period (May-June) was identified and was used to develop the model. Uninterrupted hours with such favorable weather conditions over each dekad (i.e., 10-day period) during May-June were also considered when building the model. Results showed that a combination of relative humidity >92% and 4°C < temperature < 16°C for a minimum of 4 continuous hours, associated with rainfall ≤0.1 mm (with the dekad having these conditions for 5 to 20% of the time), were optimum to the development of a wheat stripe rust epidemic. The model accurately predicted infection events: probabilities of detection were ≥0.90 and false alarm ratios were ≤0.38 on average, and critical success indexes ranged from 0.63 to 1. The method is potentially applicable to studies of other economically important fungal diseases of other crops or in different geographical locations. If weather forecasts are available, the threshold-based weather model can be integrated into an operational warning system to guide fungicide applications.

摘要

小麦条锈病(由条形柄锈菌小麦专化型引起)是全球大多数小麦种植区的主要威胁,在环境条件适宜时可能导致大幅减产。利用卢森堡三个具有代表性的小麦种植地点1999年至2015年的数据,开发了一种基于阈值的天气模型来预测小麦条锈病。首先,基于丹尼斯模型,采用蒙特卡罗模拟方法确定了适宜天气条件的范围。然后,确定了最关键感染期(5月至6月)内最佳的综合适宜天气变量(气温、相对湿度和降雨量),并用于开发该模型。在构建模型时,还考虑了5月至6月期间每个旬(即10天周期)内具有此类适宜天气条件的连续小时数。结果表明,相对湿度>92%且4°C<温度<16°C持续至少4小时,同时降雨量≤0.1毫米(该旬出现这些条件的时间占5%至20%),这些条件组合最有利于小麦条锈病流行的发生。该模型准确地预测了感染事件:平均检测概率≥0.90,误报率≤0.38,关键成功指数范围为0.63至1。该方法可能适用于其他作物或不同地理位置的其他具有经济重要性的真菌病害研究。如果有天气预报,基于阈值的天气模型可整合到业务预警系统中,以指导杀菌剂的施用。

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