基于改进BP神经网络的铁路货运量预测
Forecasting Railway Freight Volume Based on Improved BP Neural Network Model
投稿时间:2013-04-02  
中文关键词:算法改进  BP神经网络  铁路  货运量预测
英文关键词:improving algorithm  BP neural network  railway  freight volume forecasting
基金项目:
作者单位
朱文铜 西南交通大学 交通运输与物流学院 
摘要点击次数: 1318
全文下载次数: 1284
中文摘要:
      在分析铁路货运量预测方法的基础上,针对标准BP神经网络的不足,提出改进的BP神经网络预测模型。首先,利用动态陡度因子来改变激励函数的陡峭程度,以此来得到更好的激励函数响应特征以及更好的非线性表达能力;其次,利用附加动量因子,通过对以前经验的积累,既降低了神经网络对误差曲面的局部细节敏感特性,又较好的遏制了神经网络易于限于局部最小的缺陷;最后,采取改变学习率的方法,给定一个较大的学习率初始值,在学习的过程中学习率不断减小,网络最终趋于稳定。改进BP算法既可以得到更优的解,还能够缩短训练时间。利用全国铁路货运
英文摘要:
      An improved BP neural network is proposed for the shortage of standard BP neural network based on the analysis of railway freight volume forecasting methods.Firstly, this model introduces dynamic steepness factor to change the steepness of the activation function and obtain better response characteristics of activation function and better ability of nonlinear expression.Secondly, it uses additional momentum factor to accumulate previous experience,reduce network on the error surface detail sensitivity characteristics, and effectively trapped in local minimum;Thirdly,it uses learn algorithm of changing the learning rate, given a large initial learning rate value, learning rate decreases in the learning process , and the network tends to be stable network.The improved BP algorithm can get better solution ,and can also shorten the training time.The improved BP neural network is verified by using the relevant data of railway freight volume.The results show that the improved BP neural network prediction model has greatly improved the relative error and the number of iterations, and it is very effective for the forecasting of railway freight volume .
朱文铜.基于改进BP神经网络的铁路货运量预测[J].石家庄铁道大学学报:自然科学版,2014,(2):79-82.
查看全文  查看/发表评论  下载PDF阅读器
关闭