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Research of Long-Term Runoff Forecast Based on Support Vector Machine Method

机译:基于支持向量机的长期径流预报研究

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Using the global optimization properties of Particle Swarm Optimiza-tion(PSO) to carry out parameter identification of support vector machine(SVM). Before the particle swarm search for parameters, exponential transform the parameters first to make intervals [0, 1] and [1, infinity] have the same search probability. Fitness function of PSO as generalization ability of support vector machine model to be the standard, at the same time discussed the minimum error of testing samples and leave-one-out method to the SVM learning method promotion ability. Finally taking the data of monthly runoff of Yichang station in Yangtze River as an example, respectively using the ARMA model, seasonal ARIMA model, BP neural network model and the SVM model that have built to simulate forecasting, the result shows the validity of the model.
机译:使用粒子群Optimiza-Tion(PSO)的全局优化属性进行支持向量机(SVM)的参数识别。在粒子群搜索参数之前,指数变换参数首先进行间隔[0,1]和[1,Infinity]具有相同的搜索概率。 PSO的健身功能作为支持向量机模型的概括能力,同时讨论了测试样品的最小误差和留下方式的SVM学习方法促进能力。最后以yangtze河的每月径流的数据为例,分别使用ARMA模型,季节性ARIMA模型,BP神经网络模型和SVM模型构建了模拟预测,结果显示了模型的有效性。

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