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首页> 外文期刊>Journal of water resource and protection >Estimation of Evapotranspiration by Various Net Radiation Estimation Formulae for Non-Irrigated Grass in Brazil
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Estimation of Evapotranspiration by Various Net Radiation Estimation Formulae for Non-Irrigated Grass in Brazil

机译:利用巴西非灌溉草的各种净辐射估算公式估算蒸散量

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摘要

The objective of this study was to assess the accuracy of estimating evapotranspiration (ET) using the FAO-56 Penman-Monteith (FAO-56-PM) model, with measured and estimated net radiation (Rn_(measured) and Rn_(estimated), respectively), the latter obtained via five different models. We used meteorological data collected between August 2005 and June 2008, on a daily basis and on a seasonal basis (wet vs. dry seasons). The following data were collected: temperature; relative humidity; global global solar radiation (Rs); wind speed and soil heat flux. The atmospheric pressure was determined by aneroid barograph, and sunshine duration was quantified with a Campbell-Stokes recorder. In addition to the sensor readings (Rn_(measurcd)), five different models were used in order to obtain the Rn_(estimated). Four of those models consider the effects of cloud cover: the original Brunt model; the FAO-24 model for wet climates; the FAO-24 model for dry climates, and the FAO-56 model. The fifth was a linear regression model based on Rs. In estimating the daily ETO with the FAO-56-PM model, Rn_(measured) can be replaced by Rn_(estimated), in accordance with the FAO-24 model for dry climates, with a relative error of 2.9%, or with the FAO-56 model, with an error of 4.9%, when Rs is measured, regardless of the season. The Rn_(estimated) obtained with the fifth model has a relatively high error. The original Brunt model and FAO-24 model for wet climates performed more poorly than did the other models in estimating the Rn and ETO. In overcast conditions, the original Brunt model, the FAO-24 model for wet climates, the FAO-24 model for dry climates, the FAO-56 model and the model of linear regression with Rs as the predictor variable tended to overestimate Rn and ET, those estimates becoming progressively more accurate as the cloud cover diminished.
机译:这项研究的目的是使用FAO-56 Penman-Monteith(FAO-56-PM)模型评估实测和估算的净辐射(Rn_(实测)和Rn_(估算),以评估蒸散量(ET)的准确性,分别),后者是通过五个不同的模型获得的。我们使用了2005年8月至2008年6月之间每天和每个季节(湿季与旱季)之间收集的气象数据。收集了以下数据:温度;相对湿度;全球全球太阳辐射(Rs);风速和土壤热通量。用无液气压计测定大气压,用坎贝尔-斯托克斯记录仪定量日照时间。除了传感器读数(Rn_(measurcd)),还使用了五个不同的模型以获得Rn_(estimated)。其中四个模型考虑了云量的影响:原始的Brunt模型; FAO-24潮湿气候模式; FAO-24干旱气候模型和FAO-56模型。第五是基于Rs的线性回归模型。在使用FAO-56-PM模型估算每日ETO时,可以根据FAO-24干旱气候模型用Rn_(估算)代替Rn_(估算),相对误差为2.9%,或者用不论季节如何,按Rs进行测量时,FAO-56模型的误差为4.9%。通过第五模型获得的Rn_(估计)具有相对较高的误差。在估计Rn和ETO方面,原始的Brunt模型和FAO-24潮湿气候模型的表现比其他模型差。在阴天条件下,原始的Brunt模型,FAO-24潮湿气候模型,FAO-24干旱气候模型,FAO-56模型和以Rs为预测变量的线性回归模型往往会高估Rn和ET ,随着云量减少,这些估算值变得越来越准确。

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