K-Means based radial basis function neural networks for rainfall prediction

A. Dubey
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引用次数: 5

Abstract

Rainfall prediction problem has been one of the major issues of catchment management source water protection. Accurate rainfall prediction can be efficiently put to use by the agro based economy countries in terms of long term prediction. In this research work, a rainfall prediction model has been developed which uses K-Means clustering and artificial neural networks to fulfill the purpose. Artificial Neural Networks has been one of the major soft computing techniques used for the rainfall prediction since they are considered as one of the best function approximators. However, artificial neural networks have two issues which limit its applications, the computation complexity of the network and the learning time. In order to deal with these two issues, K-means clustering has been used in this work. Firstly, the data samples in this work are clustered using K means which cluster the samples according to their features. The number of clusters K has been computed using the Silhouette method. The clustered data samples are then used for training, validation and testing of different radial basis function neural networks. The results obtained from this method were then compared to the results obtained by only using a radial basis function neural network. For the comparison purpose, statistical criteria like Mean Absolute Error (MAE), Root Mean Square Error (RMSE), Nash-Sutcliffe model efficient coefficient (E) and Correlation Coefficient (R) were used. It was observed that the results obtained by this method (R= 0.94587, E=0.90148) were better than only using RBFNN (R= 0. 88015, E=0. 82159).
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基于k均值的径向基函数神经网络的降雨预测
降雨预报问题一直是流域管理、水源保护的主要问题之一。准确的降雨预报可以有效地用于农业经济国家的长期预报。本文提出了一种基于k均值聚类和人工神经网络的降雨预测模型。人工神经网络被认为是最好的函数逼近器之一,已成为用于降雨预报的主要软计算技术之一。然而,人工神经网络有两个问题限制了它的应用,即网络的计算复杂度和学习时间。为了解决这两个问题,在本工作中使用了K-means聚类。首先,使用K均值对数据样本进行聚类,K均值根据样本的特征对样本进行聚类。使用Silhouette方法计算了聚类K的数量。然后将聚类后的数据样本用于不同径向基函数神经网络的训练、验证和测试。然后将该方法得到的结果与仅使用径向基函数神经网络得到的结果进行比较。比较采用平均绝对误差(MAE)、均方根误差(RMSE)、Nash-Sutcliffe模型有效系数(E)和相关系数(R)等统计标准。结果表明,该方法的结果(R= 0.94587, E=0.90148)优于单纯使用RBFNN (R= 0)。88015年,E = 0。82159)。
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