Container throughput forecasting using a novel hybrid learning method with error correction strategy

Port throughput forecasting is not only a complicated problem but also a challenging task in port management fields. In this study, a novel hybrid learning model that utilizes effective decomposition techniques, such as variational mode decomposition (VMD), machine learning, optimization algorithms,...

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Veröffentlicht in:Knowledge-based systems 2019-10, Vol.182, p.104853, Article 104853
Hauptverfasser: Du, Pei, Wang, Jianzhou, Yang, Wendong, Niu, Tong
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container_title Knowledge-based systems
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creator Du, Pei
Wang, Jianzhou
Yang, Wendong
Niu, Tong
description Port throughput forecasting is not only a complicated problem but also a challenging task in port management fields. In this study, a novel hybrid learning model that utilizes effective decomposition techniques, such as variational mode decomposition (VMD), machine learning, optimization algorithms, and error correction strategies, is developed for container throughput forecasting. First, VMD is adopted to divide the original data into a finite set of components; subsequently, the different features hidden in the container throughput time series can be extracted by different modes from low frequency to high frequency. Next, each component obtained from VMD is modeled and predicted by an extreme learning machine (ELM) technique optimized by a butterfly optimization algorithm (BELM); subsequently, another BELM predictive model based on a training error series is constructed to predict the consequent error. Next, the correction of preliminary prediction values is calibrated. Finally, hypothesis testing, six model evaluation criteria, eleven comparison models, and two case studies are utilized to comprehensively evaluate the developed hybrid method. Based on the experimental results and related analysis, it can be fund that the proposed hybrid method is superior to the eleven comparison models in terms of prediction accuracy, and can be regarded as an effective tool for port operation management. •A hybrid learning model based on error correction strategy is firstly proposed.•This model combines data processing method and artificial intelligence algorithm.•A rigorous model evaluation system is designed to test the proposed model.•The proposed model demonstrates higher accuracy than comparison models.
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Finally, hypothesis testing, six model evaluation criteria, eleven comparison models, and two case studies are utilized to comprehensively evaluate the developed hybrid method. Based on the experimental results and related analysis, it can be fund that the proposed hybrid method is superior to the eleven comparison models in terms of prediction accuracy, and can be regarded as an effective tool for port operation management. •A hybrid learning model based on error correction strategy is firstly proposed.•This model combines data processing method and artificial intelligence algorithm.•A rigorous model evaluation system is designed to test the proposed model.•The proposed model demonstrates higher accuracy than comparison models.</description><identifier>ISSN: 0950-7051</identifier><identifier>EISSN: 1872-7409</identifier><identifier>DOI: 10.1016/j.knosys.2019.07.024</identifier><language>eng</language><publisher>Amsterdam: Elsevier B.V</publisher><subject>Algorithms ; Artificial neural networks ; Butterfly optimization algorithm ; Container throughput forecasting ; Containers ; Decomposition ; Error correction ; Error correction &amp; detection ; Error correction strategy ; Feature extraction ; Forecasting ; Hybrid forecasting model ; Machine learning ; Mathematical models ; Model accuracy ; Model testing ; Optimization ; Prediction models</subject><ispartof>Knowledge-based systems, 2019-10, Vol.182, p.104853, Article 104853</ispartof><rights>2019 Elsevier B.V.</rights><rights>Copyright Elsevier Science Ltd. 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subjects Algorithms
Artificial neural networks
Butterfly optimization algorithm
Container throughput forecasting
Containers
Decomposition
Error correction
Error correction & detection
Error correction strategy
Feature extraction
Forecasting
Hybrid forecasting model
Machine learning
Mathematical models
Model accuracy
Model testing
Optimization
Prediction models
title Container throughput forecasting using a novel hybrid learning method with error correction strategy
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