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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Prediction of long-term monthly air temperature using geographical inputs
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Prediction of long-term monthly air temperature using geographical inputs

机译:使用地理输入来预测每月的长期气温

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摘要

Air temperature as a major climatic component is important in land evaluation, water resources planning and management, irrigation scheduling and agro-hydrologic planning. In this paper, the capabilities of Adaptive Neuro-Fuzzy Inference System (ANFIS) and Artificial Neural Networks (ANNs) were evaluated in predicting long-term monthly air temperature values at 30 weather stations of Iran. Monthly data of 20 weather stations were used for training and 10 stations' data were used for testing. Consequently, the periodicity component, station latitude, longitude and altitude values were introduced as input variable to predict the long-term monthly temperature values. The estimates of the ANFIS and ANN models were compared with each other with respect to root mean-squared error, mean absolute error and determination coefficient statistics. The ANN models generally performed better than the ANFIS model in the test period. For the ANN model, the maximum and minimum determination coefficient values were found to be 0.995 and 0.921 in Semnan and Bandar-e-Abbas meteorological stations, respectively. The maximum and minimum determination coefficient values were found as 0.999 and 0.876 for the ANFIS model in Shiraz and Bandar-e-Abbas stations.
机译:气温是主要的气候组成部分,对土地评估,水资源计划和管理,灌溉计划和农业水文计划很重要。在本文中,评估了自适应神经模糊推理系统(ANFIS)和人工神经网络(ANN)的功能,以预测伊朗30个气象站的长期每月气温值。每月使用20个气象站的数据进行培训,并使用10个气象站的数据进行测试。因此,将周期性分量,台站纬度,经度和高度值作为输入变量引入,以预测长期每月温度值。 ANFIS和ANN模型的估计值在均方根误差,平均绝对误差和确定系数统计方面进行了比较。在测试期间,ANN模型通常比ANFIS模型表现更好。对于ANN模型,在Semnan和Bandar-e-Abbas气象站的最大和最小确定系数值分别为0.995和0.921。在设拉子和班达勒阿巴斯站,ANFIS模型的最大和最小测定系数值为0.999和0.876。

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