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Water Demand Prediction Model Based on Radial Basis Function Neural Network

机译:基于径向基函数神经网络的需水量预测模型

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Artificial Neural Network (ANN) simulates the structure and function of human brain. It has the abilities of parallel information processing, distributed storage and self-learning and reasoning. ANN features fault tolerance, nonlinearity, nonlocality, nonconvexity, etc., and is suitable for identifying and mapping fuzzy information or complex nonlinear relationship. Combined with the characteristics of domestic water consumption, industry water consumption and agriculture water consumption, the influencing factors are analyzed. A Radial Basis Function (RBF) Neural Network model is established for water demand prediction, using 17 water demand predication factors as input of the network. On output layer, the four nodes include urban household water demand, rural household water demand, industrial water demand and agricultural water demand. Dynamic Clustering Learning algorithm is used to determine RBF width, cluster center, number of nodes in hidden layer and weight. The number of hidden layer determined by network learning is 8. The relative error of three years are 2.74%, 3.33% and 1.41% respectively. The results show that RBF neural network has such advantages that the output is independent the initial weight value and the convergence speed is faster. And a better forecasting result is achieved through such a model.
机译:人工神经网络(ANN)模拟人脑的结构和功能。它具有并行信息处理,分布式存储以及自学习和推理的能力。人工神经网络具有容错性,非线性,非局部性,非凸性等特点,适用于识别和映射模糊信息或复杂的非线性关系。结合生活用水,工业用水和农业用水的特点,分析了影响因素。建立了径向基函数(RBF)神经网络模型来预测需水量,使用17个需水预测因子作为网络的输入。在产出层,四个节点包括城市家庭用水需求,农村家庭用水需求,工业用水需求和农业用水需求。动态聚类学习算法用于确定RBF宽度,聚类中心,隐藏层中的节点数和权重。通过网络学习确定的隐藏层数为8。三年的相对误差分别为2.74%,3.33%和1.41%。结果表明,RBF神经网络具有输出独立于初始权重值且收敛速度更快的优点。通过这种模型可以得到较好的预测结果。

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