Deep learning-based container throughput forecasting: a triple bottom line approach
PurposeContainer throughput forecasting plays a pivotal role in strategic, tactical and operational level decision-making. The determination and analysis of the influencing factors of container throughput are observed to enhance the predicting accuracy. Therefore, for effective port planning and man...
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Veröffentlicht in: | Industrial management + data systems 2021-10, Vol.121 (10), p.2100-2117 |
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description | PurposeContainer throughput forecasting plays a pivotal role in strategic, tactical and operational level decision-making. The determination and analysis of the influencing factors of container throughput are observed to enhance the predicting accuracy. Therefore, for effective port planning and management, this study employs a deep learning-based method to forecast the container throughput while considering the influence of economic, environmental and social factors on throughput forecasting.Design/methodology/approachA novel multivariate container throughput forecasting method is proposed using long short-term memory network (LSTM). The external factors influencing container throughput, delineated using triple bottom line, are considered as an input to the forecasting method. The principal component analysis (PCA) is employed to reduce the redundancy of the input variables. The container throughput data of the Port of Los Angeles (PLA) is considered for empirical analysis. The forecasting accuracy of the proposed method is measured via an error matrix. The accuracy of the results is further substantiated by the Diebold-Mariano statistical test.FindingsThe result of the proposed method is benchmarked with vector autoregression (VAR), autoregressive integrated moving average (ARIMAX) and LSTM. It is observed that the proposed method outperforms other counterpart methods. Though PCA was not an integral part of the forecasting process, it facilitated the prediction by means of “less data, more accuracy.”Originality/valueA novel deep learning-based forecasting method is proposed to predict container throughput using a hybridized autoregressive integrated moving average with external factors model and long short-term memory network (ARIMAX-LSTM). |
doi_str_mv | 10.1108/IMDS-12-2020-0704 |
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Vigneswara</creator><creatorcontrib>Shankar, Sonali ; Punia, Sushil ; Ilavarasan, P. Vigneswara</creatorcontrib><description>PurposeContainer throughput forecasting plays a pivotal role in strategic, tactical and operational level decision-making. The determination and analysis of the influencing factors of container throughput are observed to enhance the predicting accuracy. Therefore, for effective port planning and management, this study employs a deep learning-based method to forecast the container throughput while considering the influence of economic, environmental and social factors on throughput forecasting.Design/methodology/approachA novel multivariate container throughput forecasting method is proposed using long short-term memory network (LSTM). The external factors influencing container throughput, delineated using triple bottom line, are considered as an input to the forecasting method. The principal component analysis (PCA) is employed to reduce the redundancy of the input variables. The container throughput data of the Port of Los Angeles (PLA) is considered for empirical analysis. The forecasting accuracy of the proposed method is measured via an error matrix. The accuracy of the results is further substantiated by the Diebold-Mariano statistical test.FindingsThe result of the proposed method is benchmarked with vector autoregression (VAR), autoregressive integrated moving average (ARIMAX) and LSTM. It is observed that the proposed method outperforms other counterpart methods. Though PCA was not an integral part of the forecasting process, it facilitated the prediction by means of “less data, more accuracy.”Originality/valueA novel deep learning-based forecasting method is proposed to predict container throughput using a hybridized autoregressive integrated moving average with external factors model and long short-term memory network (ARIMAX-LSTM).</description><identifier>ISSN: 0263-5577</identifier><identifier>EISSN: 1758-5783</identifier><identifier>DOI: 10.1108/IMDS-12-2020-0704</identifier><language>eng</language><publisher>Wembley: Emerald Publishing Limited</publisher><subject>Accuracy ; Containers ; Decision analysis ; Decision making ; Deep learning ; Economic forecasting ; Empirical analysis ; Error analysis ; Forecasting ; GDP ; Gross Domestic Product ; Machine learning ; Macroeconomics ; Methods ; Neural networks ; Operations management ; Principal components analysis ; Redundancy ; Regression analysis ; Shipping industry ; Social factors ; Statistical tests ; Supply chains ; Sustainability ; Time series</subject><ispartof>Industrial management + data systems, 2021-10, Vol.121 (10), p.2100-2117</ispartof><rights>Emerald Publishing Limited</rights><rights>Emerald Publishing Limited 2021</rights><lds50>peer_reviewed</lds50><woscitedreferencessubscribed>false</woscitedreferencessubscribed><citedby>FETCH-LOGICAL-c314t-c81b477d19832bfc2e157e3f180476eb0bcab76e6ec662a02e588adde1d0713e3</citedby><cites>FETCH-LOGICAL-c314t-c81b477d19832bfc2e157e3f180476eb0bcab76e6ec662a02e588adde1d0713e3</cites><orcidid>0000-0001-8468-7994 ; 0000-0002-8607-4080</orcidid></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><linktohtml>$$Uhttps://www.emerald.com/insight/content/doi/10.1108/IMDS-12-2020-0704/full/html$$EHTML$$P50$$Gemerald$$H</linktohtml><link.rule.ids>314,778,782,964,11622,27911,27912,52676</link.rule.ids></links><search><creatorcontrib>Shankar, Sonali</creatorcontrib><creatorcontrib>Punia, Sushil</creatorcontrib><creatorcontrib>Ilavarasan, P. 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The principal component analysis (PCA) is employed to reduce the redundancy of the input variables. The container throughput data of the Port of Los Angeles (PLA) is considered for empirical analysis. The forecasting accuracy of the proposed method is measured via an error matrix. The accuracy of the results is further substantiated by the Diebold-Mariano statistical test.FindingsThe result of the proposed method is benchmarked with vector autoregression (VAR), autoregressive integrated moving average (ARIMAX) and LSTM. It is observed that the proposed method outperforms other counterpart methods. 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Vigneswara</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Deep learning-based container throughput forecasting: a triple bottom line approach</atitle><jtitle>Industrial management + data systems</jtitle><date>2021-10-05</date><risdate>2021</risdate><volume>121</volume><issue>10</issue><spage>2100</spage><epage>2117</epage><pages>2100-2117</pages><issn>0263-5577</issn><eissn>1758-5783</eissn><abstract>PurposeContainer throughput forecasting plays a pivotal role in strategic, tactical and operational level decision-making. The determination and analysis of the influencing factors of container throughput are observed to enhance the predicting accuracy. 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subjects | Accuracy Containers Decision analysis Decision making Deep learning Economic forecasting Empirical analysis Error analysis Forecasting GDP Gross Domestic Product Machine learning Macroeconomics Methods Neural networks Operations management Principal components analysis Redundancy Regression analysis Shipping industry Social factors Statistical tests Supply chains Sustainability Time series |
title | Deep learning-based container throughput forecasting: a triple bottom line approach |
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