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首页> 外文期刊>Journal of hydrologic engineering >ANFIS Modeling with ICA, BBO, TLBO, and IWO Optimization Algorithms and Sensitivity Analysis for Predicting Daily Reference Evapotranspiration
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ANFIS Modeling with ICA, BBO, TLBO, and IWO Optimization Algorithms and Sensitivity Analysis for Predicting Daily Reference Evapotranspiration

机译:与ICA,BBO,TLBO和IWO优化算法的ANFIS建模和敏感性分析,用于预测日参考蒸散量

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Evapotranspiration (ET) is an important factor in water resource management. This research investigated the performance of four optimization algorithms to hybridize adaptive network-based fuzzy inference systems (ANFIS) models as follow: ANFIS with imperialist competitive algorithm (ANFIS-ICA), ANFIS with biogeography-based optimization (ANFIS-BBO), ANFIS with teaching-learning-based optimization (ANFIS-TLBO), and ANFIS with invasive weed optimization algorithm (ANFIS-IWO). The hybridized algorithms were used to predict reference evapotranspiration (ET_o) values in Kerman synoptic station. Six observed variables, including mean air temperature (T_(mean)), bright sunshine hours (SSH), solar radiation (R_s), mean speed of the wind at 2-m height (U_2), pan evaporation (E_(pan)), and three estimated variables, including extraterrestrial radiation (R_a), saturation vapor pressure (e_s), and actual vapor pressure (e_a) were utilized to develop hybrid models. The results showed that the accuracy of hybrid models by using T_(mean), U_2, e_s, and e_a was better than those using all required variables for developing the FAO-Penman-Monteith (FAO-PM) equation. Among the hybrid models, the ANFIS-ICA with respect to R = 0.99, RMSE = 0.5, and NSE = 0.98 was considered the superior model. A sensitivity analysis has been done to assess the impact of inputs on the output of the superior model. E_a and T_(mean) had the highest and lowest effect on ET_o prediction, respectively. Finally, ET_o values were estimated by relatively new empirical equations and compared with FAO-PM equation. It was observed that the capability of hybrid models was more than the empirical equations in estimation of the ET_o values.
机译:蒸散(et)是水资源管理的重要因素。本研究调查了四种优化算法的性能,以杂交的基于网络的模糊推理系统(ANFIS)模型如下:ANFIS与帝国主义竞争算法(ANFIS-ICA),具有基于生物地理的优化(ANFIS-BBO),ANFIS的ANFIS基于教学的优化(ANFIS-TLBO),以及具有侵入性杂草优化算法的ANFIS(ANFIS-IWO)。杂交算法用于预测Kerman Synoptic站中的参考蒸发(ET_O)值。六个观测的变量,包括平均空气温度(T_(平均值)),明亮的阳光小时(SSH),太阳辐射(R_S),风的平均速度为2米(U_2),平移蒸发(E_(锅))和三种估计的变量,包括外星辐射(R_A),饱和蒸气压(E_S)和实际蒸气压(E_A)来开发混合模型。结果表明,使用T_(平均值),U_2,E_S和E_A的混合模型的准确性优于使用所需变量来开发FAO-PENMAN-MONTEITH(FAO-PM)方程的那些。在混合模型中,ANFIS-ICA相对于R = 0.99,RMSE = 0.5和NSE = 0.98被认为是优越的模型。已经进行了敏感性分析来评估输入对卓越模型输出的影响。 E_A和T_(平均值)分别对ET_O预测具有最高和最低的影响。最后,通过相对较新的经验方程估计ET_O值并与FAO-PM方程相比。观察到,在估计ET_O值的情况下,混合模型的能力大于经验方程。

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