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首页> 外文期刊>International Journal of Information Technology and Computer Science >Rainfall Events Evaluation Using Adaptive Neural-Fuzzy Inference System
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Rainfall Events Evaluation Using Adaptive Neural-Fuzzy Inference System

机译:利用自适应神经模糊推理系统进行降雨事件评估

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We are interested in rainfall events evaluation by applying adaptive neural-fuzzy inference System. Four parameters: Temperature, relative humidity, total cloud cover and due point are the input variables for our model, each has 121 membership functions. The data is six years METAR data for Mashhad city [2007-2012]. Different models for Mashhad city stations were constructed depending on the available data sets. Among the overall 25 possibilities one model with one hundred twenty one fuzzy IF-THEN rules has chosen. The output variable is 0 (no rainfall event) or 1 (rainfall event). With comparing trained data with actual data, we could evaluate rainfall events about 90.5 percent. The results are in high agreement with the recorded data for the station with increasing in values towards the real time rain events. All implementation are done with MATLAB.
机译:我们通过应用自适应神经模糊推理系统对降雨事件评估感兴趣。四个参数:温度,相对湿度,总云覆盖和到期点是我们模型的输入变量,每个都有121个成员函数。数据是Mashhad City的六年元数据[2007-2012]。根据可用数据集构建Mashhad City Stations的不同模型。在整个25个可能性中,一个模型,其中一百二十一个模糊If-Dot规则选择了。输出变量为0(无降雨事件)或1(降雨事件)。通过将训练的数据与实际数据进行比较,我们可以评估大约90.5%的降雨事件。结果与车站的记录数据达成协议,随着实时雨季事件的增加而增加。所有实现都使用Matlab完成。

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