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Application of Random Forest and Back Propagation Neural Network in Estimating Radiation-Based Reference Evapotranspiration Model in Gansu Province

机译:随机森林和反向传播神经网络在甘肃省基于辐射的参考蒸散量估算中的应用

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Reference evapotranspiration (ETo) is an important factor in the water-saving agriculture and in the soil-plant-atmosphere continuum. Many machine learning methods have been introduced into predicting ETo. In order to improve the accuracy of radiation-based ETo models, this paper presents an ETo model called RFR based on random forest (RF). By taking the results of FAO Penman-Monteith (FAOPM) model as the standard, 4 radiation-based ETo models, including RFR model, Priestley-Taylor (PT) model, Makkink model and BPR model (radiation-based ETo model based on back propagation neural network) were evaluated in Yumen, Gansu Province. Results show that RFR model can fit the nonlinear mapping relationship between the radiation parameters and ETo well. The accuracy of RFR model (with RMSE of 0.81 mm/day) is superior to BPR model (with RMSE of 0.89 mm/day) and other compared empirical models. At the same time, training time of RFR model is shorter than BPR model. Therefore, the method for constructing ETo model based on random forest can effectively improve the accuracy of radiation-based ETo model in Gansu Province.
机译:参考蒸散量(ETo)是节水农业和土壤-植物-大气连续体中的重要因素。许多机器学习方法已被引入到预测ETo中。为了提高基于辐射的ETo模型的准确性,本文提出了一种基于随机森林(RF)的ETo模型,称为RFR。以FAO Penman-Monteith(FAOPM)模型的结果为标准,建立了4种基于辐射的ETo模型,包括RFR模型,Priestley-Taylor(PT)模型,Makkink模型和BPR模型(基于辐射的ETo模型)。传播神经网络)在甘肃省玉门市进行了评估。结果表明,RFR模型可以很好地拟合辐射参数与ETo之间的非线性映射关系。 RFR模型(RMSE为0.81 mm /天)的准确性优于BPR模型(RMSE为0.89 mm /天)和其他比较的经验模型。同时,RFR模型的训练时间比BPR模型的训练时间短。因此,建立基于随机森林的ETo模型的方法可以有效地提高甘肃省基于辐射的ETo模型的准确性。

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