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Published in: Annals of Data Science 2/2022

19-11-2021

Exploring Freight Loading Management by Deep Learning: a Case Study in Home Furnishing Industry

Authors: Wei Deng, Rajvardhan Patil, Fangyao Liu, Ergu Daji, Yong Shi

Published in: Annals of Data Science | Issue 2/2022

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Abstract

Long short-term memory (LSTM) networks as state-of-the-art Deep Learning models, have achieved remarkable results in time series forecasting. However, they are less commonly applied to the industry of logistics. This paper presents two novel LSTM networks to predict the freight loading of routing areas, and the design of a smart loading management system is introduced. While most existing works on LSTM utilize the power of its prediction very well, our study shows less accurate and instable results if only LSTM network is applied, that arise from the big variation in the dataset. Instead, two constraints are inspired in this paper. The first constraint adds a time factor node to strengthen the correlation between predicted final loading units and booked loading units as close to delivery date. And the second proposal extends to parallel training by groupwise constraint. Experiments with across 3-year records in a national wide home furnishing retail company show that constraint LSTM networks significantly improve both the accuracy and stability of the prediction. Besides, the design of a smart loading management system will be shown, in which LSTM model plays the core rule to predict loading capacity, meanwhile the rule-based system triggers different events based on loading prediction and truck size.

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Metadata
Title
Exploring Freight Loading Management by Deep Learning: a Case Study in Home Furnishing Industry
Authors
Wei Deng
Rajvardhan Patil
Fangyao Liu
Ergu Daji
Yong Shi
Publication date
19-11-2021
Publisher
Springer Berlin Heidelberg
Published in
Annals of Data Science / Issue 2/2022
Print ISSN: 2198-5804
Electronic ISSN: 2198-5812
DOI
https://doi.org/10.1007/s40745-021-00357-6

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