Similarity Grouping-Guided Neural Network Modeling for Maritime Time Series Prediction

Reliable and accurate prediction of time series plays a crucial role in the maritime industry, such as economic investment, transportation planning, port planning, design, and so on. The dynamic growth of maritime time series has the predominantly complex, and nonlinear and non-stationary properties...

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Main Authors: Yan Li, Ryan Wen Liu, Zhao Liu, Jingxian Liu
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8727861/
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spelling doaj-bd48ae24a1fe454394b4bb44373ed2732021-03-30T00:11:24ZengIEEEIEEE Access2169-35362019-01-017726477265910.1109/ACCESS.2019.29204368727861Similarity Grouping-Guided Neural Network Modeling for Maritime Time Series PredictionYan Li0Ryan Wen Liu1https://orcid.org/0000-0002-1591-5583Zhao Liu2Jingxian Liu3Hubei Key Laboratory of Inland Shipping Technology, School of Navigation, Wuhan University of Technology, Wuhan, ChinaHubei Key Laboratory of Inland Shipping Technology, School of Navigation, Wuhan University of Technology, Wuhan, ChinaHubei Key Laboratory of Inland Shipping Technology, School of Navigation, Wuhan University of Technology, Wuhan, ChinaHubei Key Laboratory of Inland Shipping Technology, School of Navigation, Wuhan University of Technology, Wuhan, ChinaReliable and accurate prediction of time series plays a crucial role in the maritime industry, such as economic investment, transportation planning, port planning, design, and so on. The dynamic growth of maritime time series has the predominantly complex, and nonlinear and non-stationary properties. To guarantee high-quality prediction performance, we propose to first adopt the empirical mode decomposition (EMD) and ensemble EMD (EEMD) methods to decompose the original time series into high- and low-frequency components. The low-frequency components can be easily predicted directly through traditional neural network (NN) methods. It is more difficult to predict high-frequency components due to their properties of weak mathematical regularity. To take advantage of the inherent self-similarities within high-frequency components, these components will be divided into several continuous small (overlapping) segments. The grouped segments with high similarities are then selected to form more proper training datasets for traditional NN methods. This regrouping strategy can assist in enhancing the prediction accuracy of high-frequency components. The final prediction result is obtained by integrating the predicted high- and low-frequency components. Our proposed three-step prediction frameworks benefit from the time series decomposition and similar segments grouping. The experiments on both port cargo throughput and vessel traffic flow have illustrated its superior performance in terms of prediction accuracy and robustness.https://ieeexplore.ieee.org/document/8727861/Data predictionneural networksimilarity groupingempirical mode decomposition (EMD)dynamic time warping (DTW)
collection DOAJ
language English
format Article
sources DOAJ
author Yan Li
Ryan Wen Liu
Zhao Liu
Jingxian Liu
spellingShingle Yan Li
Ryan Wen Liu
Zhao Liu
Jingxian Liu
Similarity Grouping-Guided Neural Network Modeling for Maritime Time Series Prediction
IEEE Access
Data prediction
neural network
similarity grouping
empirical mode decomposition (EMD)
dynamic time warping (DTW)
author_facet Yan Li
Ryan Wen Liu
Zhao Liu
Jingxian Liu
author_sort Yan Li
title Similarity Grouping-Guided Neural Network Modeling for Maritime Time Series Prediction
title_short Similarity Grouping-Guided Neural Network Modeling for Maritime Time Series Prediction
title_full Similarity Grouping-Guided Neural Network Modeling for Maritime Time Series Prediction
title_fullStr Similarity Grouping-Guided Neural Network Modeling for Maritime Time Series Prediction
title_full_unstemmed Similarity Grouping-Guided Neural Network Modeling for Maritime Time Series Prediction
title_sort similarity grouping-guided neural network modeling for maritime time series prediction
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Reliable and accurate prediction of time series plays a crucial role in the maritime industry, such as economic investment, transportation planning, port planning, design, and so on. The dynamic growth of maritime time series has the predominantly complex, and nonlinear and non-stationary properties. To guarantee high-quality prediction performance, we propose to first adopt the empirical mode decomposition (EMD) and ensemble EMD (EEMD) methods to decompose the original time series into high- and low-frequency components. The low-frequency components can be easily predicted directly through traditional neural network (NN) methods. It is more difficult to predict high-frequency components due to their properties of weak mathematical regularity. To take advantage of the inherent self-similarities within high-frequency components, these components will be divided into several continuous small (overlapping) segments. The grouped segments with high similarities are then selected to form more proper training datasets for traditional NN methods. This regrouping strategy can assist in enhancing the prediction accuracy of high-frequency components. The final prediction result is obtained by integrating the predicted high- and low-frequency components. Our proposed three-step prediction frameworks benefit from the time series decomposition and similar segments grouping. The experiments on both port cargo throughput and vessel traffic flow have illustrated its superior performance in terms of prediction accuracy and robustness.
topic Data prediction
neural network
similarity grouping
empirical mode decomposition (EMD)
dynamic time warping (DTW)
url https://ieeexplore.ieee.org/document/8727861/
work_keys_str_mv AT yanli similaritygroupingguidedneuralnetworkmodelingformaritimetimeseriesprediction
AT ryanwenliu similaritygroupingguidedneuralnetworkmodelingformaritimetimeseriesprediction
AT zhaoliu similaritygroupingguidedneuralnetworkmodelingformaritimetimeseriesprediction
AT jingxianliu similaritygroupingguidedneuralnetworkmodelingformaritimetimeseriesprediction
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