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采用改进的BP神经网络预测离心通风机性能的研究
引用本文:谷传纲,阎昉,王彤.采用改进的BP神经网络预测离心通风机性能的研究[J].西安交通大学学报,1999,33(3):43-47,99.
作者姓名:谷传纲  阎昉  王彤
作者单位:西安交通大学,710049,西安
摘    要:BP神经网络在离心通风机性能预测的研究中具有重要的价值,研究结果表明,对于任意平方可积函数,都可以采用BP算法通过对样本的学习获得满意的模拟结果,因此,在构造离心通风机性能预测模型中,BP算法提供了一个有力的工具。但是,在实际应用中,BP算法的收敛速度很慢,而且,人教学上看,它是一种梯度最速下降法,这就不可避免地存在着局部最小问题,尤其在训练量大、输入参数众多的情况下,学习效果大受影响。作者从改善

关 键 词:神经网络  BP算法  通风机  离心式  预测

Improved Neural Network for Predicting Performance of Centrifugal Fans
Gu Chuangang,Yan Fang,Wang Tong.Improved Neural Network for Predicting Performance of Centrifugal Fans[J].Journal of Xi'an Jiaotong University,1999,33(3):43-47,99.
Authors:Gu Chuangang  Yan Fang  Wang Tong
Abstract:Back propagation (BP) neural networks are used to predict the performance of centrifugal fans. Any square integrable function can be approximated to any desired degree of accuracy and can represent an arbitrary finite training set. Since the BP network is often hampered by the slow rate of convergence and occurrence of local minima to deficient approximation, function link networks are introduced to improve the annealing algorithm by using adaptive step size gradient descent and proper initialization of connections. The methods have greatly accelerated the convergence and local minima. As a result, the model's ability to simulate a nonlinear dynamic system is enhanced. From the numerical experimental result, the model is seen to be effective.
Keywords:neural networks  BP algorithm  function link  adaptive step size  
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