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Remote sensing and interpolation methods can obtain weather data for disease prediction

机译:遥感和插值方法可以获得疾病预测的天气数据

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The risk of the appearance or the intensification of a crop disease can be assessed using information about the weather, the pathogen or the crop. Weather data for use in disease risk prediction can be obtained from measurements at a nearby weather station. While weather measurements can represent accurate weather conditions at the site where the weather station is located, these data are representative only of a small area near the station. To obtain weather information over a larger area, spatial interpolation and remote sensing can be used to estimate the likely weather conditions in other locations. It is crucial to obtain weather data at an appropriate temporal resolution (e.g. daily or hourly) for a given disease in order to predict the disease. A weather database system is being constructed to provide high-quality climatic data (e.g. daily temperature, humidity and rainfall), which can be used to quantify the link between weather conditions and disease outbreaks.
机译:可以使用有关天气,病原体或作物的信息来评估外观或作物疾病的强化的风险。用于疾病风险预测的天气数据可以从附近的气象站的测量获得。虽然天气测量可以代表天气站所在的网站上的准确天气条件,但这些数据只有在车站附近的一个小区域。为了通过更大的区域获得天气信息,空间插值和遥感可用于估计其他位置的可能天气情况。在给定疾病中以适当的时间分辨率(例如每日或每小时)来获得天气数据至关重要,以预测疾病。正在建造天气数据库系统以提供高质量的气候数据(例如,每日温度,湿度和降雨),可用于量化天气状况和疾病爆发之间的联系。

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