Automated Container Terminal Production Operation and Optimization via an AdaBoost-Based Digital Twin Framework

Digital twin (DT), machine learning, and industrial Internet of things (IIoT) provide great potential for the transformation of the container terminal from automation to intelligence. The production control in the loading and unloading process of automated container terminals (ACTs) involves complex...

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Main Authors: Yu Li, Daofang Chang, Yinping Gao, Ying Zou, Chunteng Bao
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2021/1936764
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spelling doaj-78eca65155fc4b2db8ef1519a7734af22021-09-20T00:29:59ZengHindawi-WileyJournal of Advanced Transportation2042-31952021-01-01202110.1155/2021/1936764Automated Container Terminal Production Operation and Optimization via an AdaBoost-Based Digital Twin FrameworkYu Li0Daofang Chang1Yinping Gao2Ying Zou3Chunteng Bao4Institute of Logistics Science and EngineeringInstitute of Logistics Science and EngineeringInstitute of Logistics Science and EngineeringShanghai International Port (Group) Co., LtdInstitute of Logistics Science and EngineeringDigital twin (DT), machine learning, and industrial Internet of things (IIoT) provide great potential for the transformation of the container terminal from automation to intelligence. The production control in the loading and unloading process of automated container terminals (ACTs) involves complex situations, which puts forward high requirements for efficiency and safety. To realize the real-time optimization and security of the ACT, a framework integrating DT with the AdaBoost algorithm is proposed in this study. The framework is mainly composed of physical space, a data service platform, and virtual space, in which the twin space and service system constitute virtual space. In the proposed framework, a multidimensional and multiscale DT model in twin space is first built through a 3D MAX and U3D technology. Second, we introduce a random forest and XGBoost to compare with AdaBoost to select the best algorithm to train and optimize the DT mechanism model. Third, the experimental results show that the AdaBoost algorithm is better than others by comparing the performance indexes of model accuracy, root mean square error, interpretable variance, and fitting error. In addition, we implement empirical experiments by different scales to further evaluate the proposed framework. The experimental results show that the mode of the DT-based terminal operation has higher loading and unloading efficiency than that of the conventional terminal operation, increasing by 23.34% and 31.46% in small-scale and large-scale problems, respectively. Moreover, the visualization service provided by the DT system can monitor the status of automation equipment in real time to ensure the safety of operation.http://dx.doi.org/10.1155/2021/1936764
collection DOAJ
language English
format Article
sources DOAJ
author Yu Li
Daofang Chang
Yinping Gao
Ying Zou
Chunteng Bao
spellingShingle Yu Li
Daofang Chang
Yinping Gao
Ying Zou
Chunteng Bao
Automated Container Terminal Production Operation and Optimization via an AdaBoost-Based Digital Twin Framework
Journal of Advanced Transportation
author_facet Yu Li
Daofang Chang
Yinping Gao
Ying Zou
Chunteng Bao
author_sort Yu Li
title Automated Container Terminal Production Operation and Optimization via an AdaBoost-Based Digital Twin Framework
title_short Automated Container Terminal Production Operation and Optimization via an AdaBoost-Based Digital Twin Framework
title_full Automated Container Terminal Production Operation and Optimization via an AdaBoost-Based Digital Twin Framework
title_fullStr Automated Container Terminal Production Operation and Optimization via an AdaBoost-Based Digital Twin Framework
title_full_unstemmed Automated Container Terminal Production Operation and Optimization via an AdaBoost-Based Digital Twin Framework
title_sort automated container terminal production operation and optimization via an adaboost-based digital twin framework
publisher Hindawi-Wiley
series Journal of Advanced Transportation
issn 2042-3195
publishDate 2021-01-01
description Digital twin (DT), machine learning, and industrial Internet of things (IIoT) provide great potential for the transformation of the container terminal from automation to intelligence. The production control in the loading and unloading process of automated container terminals (ACTs) involves complex situations, which puts forward high requirements for efficiency and safety. To realize the real-time optimization and security of the ACT, a framework integrating DT with the AdaBoost algorithm is proposed in this study. The framework is mainly composed of physical space, a data service platform, and virtual space, in which the twin space and service system constitute virtual space. In the proposed framework, a multidimensional and multiscale DT model in twin space is first built through a 3D MAX and U3D technology. Second, we introduce a random forest and XGBoost to compare with AdaBoost to select the best algorithm to train and optimize the DT mechanism model. Third, the experimental results show that the AdaBoost algorithm is better than others by comparing the performance indexes of model accuracy, root mean square error, interpretable variance, and fitting error. In addition, we implement empirical experiments by different scales to further evaluate the proposed framework. The experimental results show that the mode of the DT-based terminal operation has higher loading and unloading efficiency than that of the conventional terminal operation, increasing by 23.34% and 31.46% in small-scale and large-scale problems, respectively. Moreover, the visualization service provided by the DT system can monitor the status of automation equipment in real time to ensure the safety of operation.
url http://dx.doi.org/10.1155/2021/1936764
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AT daofangchang automatedcontainerterminalproductionoperationandoptimizationviaanadaboostbaseddigitaltwinframework
AT yinpinggao automatedcontainerterminalproductionoperationandoptimizationviaanadaboostbaseddigitaltwinframework
AT yingzou automatedcontainerterminalproductionoperationandoptimizationviaanadaboostbaseddigitaltwinframework
AT chuntengbao automatedcontainerterminalproductionoperationandoptimizationviaanadaboostbaseddigitaltwinframework
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