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Evapotranspiration estimation by two different neuro-fuzzy inference systems

机译:通过两个不同的神经模糊推理系统估算蒸散量

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摘要

The potential of two different adaptive network-based fuzzy inference systems (ANFIS) based neuro-fuzzy systems in modeling of reference evapotranspiration (ET_0) are investigated in this paper. The two neuro-fuzzy systems are: (1) grid partition based fuzzy inference system, named G-ANFIS, and (2) subtractive clustering based fuzzy inference system, named S-ANFIS. In the first part of the study, the performance of resultant FIS was compared and the effect of parameters was investigated. Various daily climatic data, that is, solar radiation, air temperature, relative humidity and wind speed from Santa Monica, in Los Angeles, USA, are used as inputs to the FIS models so as to estimate ET_0 obtained using the FAO-56 Penman-Monteith equation. In the second part of the study, the estimates of the FIS models are compared with those of artificial neural network (ANN) approach, namely, multi-layer perceptron (MLP), and three empirical models, namely, CIMIS Penman, Hargreaves and Ritchie methods. Root mean square error, mean absolute error and determination coefficient statistics are used as comparing criteria for the evaluation of the models' performances. Based on the comparisons, it is found that the S-ANFIS model yields plausible accuracy with fewer amounts of computations as compared to the G-ANFIS and MLP models in modeling the ET_0 process.
机译:本文研究了两种不同的基于自适应网络的模糊推理系统(ANFIS)的神经模糊系统在参考蒸散量(ET_0)建模中的潜力。这两个神经模糊系统是:(1)基于网格划分的模糊推理系统,称为G-ANFIS,以及(2)基于减法聚类的模糊推理系统,称为S-ANFIS。在研究的第一部分中,比较了所得FIS的性能,并研究了参数的影响。来自美国洛杉矶圣莫尼卡的各种每日气候数据,即太阳辐射,气温,相对湿度和风速,被用作FIS模型的输入,以便估算使用FAO-56 Penman-蒙特斯方程。在研究的第二部分中,将FIS模型的估计值与人工神经网络(ANN)方法(即多层感知器(MLP))和三个经验模型(CIMIS Penman,Hargreaves和Ritchie)进行了比较。方法。均方根误差,绝对绝对误差和确定系数统计量用作评估模型性能的比较标准。基于比较,发现在建模ET_0过程中,与G-ANFIS和MLP模型相比,S-ANFIS模型产生的可信度更高,而计算量却更少。

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