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首页> 外文期刊>Journal of Zhejiang University. Science, A >Water quality forecast through application of BP neural network at Yuqiao reservoir
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Water quality forecast through application of BP neural network at Yuqiao reservoir

机译:运用BP神经网络预测于桥水库水质。

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This paper deals with the study of a water quality forecast model through application of BP neural network technique and GUI (Graphical User Interfaces) function of MATLAB at Yuqiao reservoir in Tianjin. To overcome the shortcomings of traditional BP algorithm as being slow to converge and easy to reach extreme minimum value, the model adopts LM (Leven-berg-Marquardt) algorithm to achieve a higher speed and a lower error rate. When factors affecting the study object are identified, the reservoir's 2005 measured values are used as sample data to test the model. The number of neurons and the type of transfer functions in the hidden layer of the neural network are changed from time to time to achieve the best forecast results. Through simulation testing the model shows high efficiency in forecasting the water quality of the reservoir.
机译:通过应用BP神经网络技术和MATLAB的GUI(图形用户界面)功能,对天津市于桥水库进行水质预测模型的研究。为克服传统BP算法收敛速度慢,极易达到极小值的缺点,该模型采用LM(Leven-berg-Marquardt)算法来实现较高的速度和较低的错误率。确定影响研究对象的因素后,将水库2005年的测量值用作样本数据以测试模型。神经网络隐藏层中的神经元数量和传递函数的类型会不时更改,以实现最佳的预测结果。通过模拟测试,该模型在预测水库水质方面显示出很高的效率。

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