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Short-term forecasting of daily reference evapotranspiration using the Penman-Monteith model and public weather forecasts

机译:使用Penman-Monteith模型和公共天气预报对日参考蒸散量进行短期预报

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Short-term daily reference evapotranspiration (ETo) forecasts are required to facilitate real-time irrigation decision making. We forecasted daily 7-day-ahead ETo using the Penman-Monteith (PM) model and public weather forecasts. Public weather forecast data, including daily maximum and minimum temperatures, weather types and wind scales, for six stations located in a wide range of climate zones of China were collected. Weather types and wind scales were converted to sunshine duration and wind speed to forecast ETo. Meanwhile, daily meteorological data for the same period and locations were collected to calculate ETo, which served as reference standard for evaluating forecasting performance. The results showed that the forecasting performance for the minimum temperature was the best, followed by maximum temperature, sunshine duration and wind speed. Also, it was found that using public weather forecasts and the PM model improved the forecasting performance of daily ETo compared to those obtained when using the HS model with temperature forecasts as the only input data, and this improvement was because the weather type and wind scale forecasts also have positive influence on ETo forecasting. Further, the greatest impact on ETo forecasting error was found to be caused by the errors in sunshine duration and wind speed, followed by maximum and minimum temperature forecasts. (C) 2016 Elsevier B.V. All rights reserved.
机译:需要短期每日参考蒸散量(ETo)预报以促进实时灌溉决策。我们使用Penman-Monteith(PM)模型和公共天气预报来预测每日提前7天的ETo。收集了位于中国多个气候区的六个气象站的公共天气预报数据,包括每日的最高和最低温度,天气类型和风标。天气类型和风标被转换为日照时长和风速以预测ETo。同时,收集了同一时期,同一地点的每日气象数据,计算出ETo,作为评价预报性能的参考标准。结果表明,最低温度的预报性能最好,其次是最高温度,日照持续时间和风速。另外,与使用温度预报作为唯一输入数据的HS模型相比,使用公共天气预报和PM模型改善了每日ETo的预报性能,这是因为天气类型和风标预测也对ETo预测产生积极影响。此外,发现对ETo预测误差的最大影响是由日照持续时间和风速误差引起的,其次是最高和最低温度预测。 (C)2016 Elsevier B.V.保留所有权利。

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