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基于小波分解的集卡港内周转时间预测
引用本文:孙世超,董曜,李娜,郑勇.基于小波分解的集卡港内周转时间预测[J].上海海事大学学报,2021,42(3):8-14.
作者姓名:孙世超  董曜  李娜  郑勇
作者单位:大连海事大学交通运输工程学院,大连海事大学交通运输工程学院,大连海事大学交通运输工程学院,大连海事大学交通运输工程学院
基金项目:国家自然科学基金(71702019)
摘    要:为准确预测集卡的港内周转时间,进而提升整个物流系统的作业效率,通过对集装箱码头闸口数据进行深入分析,得到3种不同任务类型的集卡港内周转时间序列,并在此基础上提出一种基于小波分解和自回归移动平均(autoregressive moving average, ARMA)模型的集卡港内周转时间预测方法。该方法首先利用小波分解技术对集卡港内周转时间序列的多维变化特征进行逐层分离,再利用ARMA模型对分离后的多个时间序列分别进行拟合,然后对拟合结果进行合并,以此近似模拟原序列的时变规律,继而实现集卡港内周转时间的短期预测。为验证该方法的有效性,将数据样本划分为训练集(75%)和测试集(25%),训练集用于拟合多维ARMA模型,测试集用于检验ARMA模型的预测结果误差。研究结果表明,对于3种任务类型,该模型均可以精确预测集卡的港内周转时间,为物流企业调整集卡运输计划提供相应的技术支持。

关 键 词:水运管理    集卡周转时间预测    小波分解    自回归移动平均(ARMA)模型    码头闸口数据
收稿时间:2021/3/25 0:00:00
修稿时间:2021/6/1 0:00:00

Truck turnaround time prediction in a port based on wavelet decomposition
SUN SHI CHAO,DONG YAO,LI NA and ZHENG YONG.Truck turnaround time prediction in a port based on wavelet decomposition[J].Journal of Shanghai Maritime University,2021,42(3):8-14.
Authors:SUN SHI CHAO  DONG YAO  LI NA and ZHENG YONG
Institution:Dalian Maritime university,Dalian Maritime university,Dalian Maritime university and Dalian Maritime university
Abstract:In order to accurately predict the in a port turnaround time of trucks and improve operation efficiency of the whole logistics system, three different task types of in a port turnaround time series of trucks are obtained through the analysis on the gate data of container terminals. On this basis, a method for predicting the in a port turnaround time of trucks based on the wavelet decomposition and the autoregressive moving average (ARMA) model is proposed. This method initially employs the wavelet decomposition technology to separate the multi dimensional change characteristics of the in a port turnaround time series of trucks, and then applies the ARMA model to fit the time series after separation, respectively. Subsequently, the fitted results are merged to simulate approximately the time varying law of the original series, and then realize the short term prediction of the in a port turnaround time of trucks. In order to verify the effectiveness of the method, this study divides the data sample into a training set (75%) and a test set (25%). The training set is used to fit the multi dimensional ARMA model, and the test set is used to test the prediction error of the ARMA model. The results show that for the three task types, the model can accurately predict the in a port turnaround time of trucks, and it can provide corresponding technical support for the adjustment of truck transportation plan of logistics enterprises.
Keywords:water transportation management  prediction of truck turnaround time  wavelet decomposition  autoregressive moving average (ARMA) model  terminal gate data
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