## 留言板

 引用本文: 徐向阳, 王书翰, 汤鹏翔, 等 . 多目标组合运输物流量预测建模算法[J]. 北京航空航天大学学报, 2006, 32(10): 1209-1214.
Xu Xiangyang, Wang Shuhan, Tang Pengxiang, et al. Algorithm of multi-objective prediction on logistics volume of combined transportation[J]. Journal of Beijing University of Aeronautics and Astronautics, 2006, 32(10): 1209-1214. (in Chinese)
 Citation: Xu Xiangyang, Wang Shuhan, Tang Pengxiang, et al. Algorithm of multi-objective prediction on logistics volume of combined transportation[J]. Journal of Beijing University of Aeronautics and Astronautics, 2006, 32(10): 1209-1214. (in Chinese)

## 多目标组合运输物流量预测建模算法

###### 作者简介:徐向阳(1965-),男,山东烟台人,教授,xxy@buaa.edu.cn.
• 中图分类号: U 491.14

## Algorithm of multi-objective prediction on logistics volume of combined transportation

• 摘要: 提出了一种新的多目标组合运输物流量预测建模算法.以时间、领域、影响以及组合运输为基准,运用系统工程理论思想设计出一种四维的物流量影响因素模型,并运用结构方程模型对所建模型做了优化,提取出组合运输物流量的核心影响因素.在改进的神经网络算法的基础上结合遗传算法,提出了一种结合遗传算法的改进的神经网络新算法,弥补了改进的神经网络算法上的缺陷,在多目标组合运输物流量预测的实例应用中,该算法不仅有很高的预测精度,而且具有收敛速度快、运行稳定的特点.

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##### 出版历程
• 收稿日期:  2006-05-15
• 刊出日期:  2006-10-31

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