Fuel-saving route planning with data-driven and learning-based approaches – A systematic solution for harbor tugs
In recent years, there are trends toward cleaner port environments through enforcement by imposed legislation. Transit optimisation of fuel-based port service boats like harbour tugs has emerged as a critical task to reduce fuel consumption and carbon emission. In this paper, an innovative learningb...
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sg-smu-ink.sis_research-109222025-01-02T08:03:58Z Fuel-saving route planning with data-driven and learning-based approaches – A systematic solution for harbor tugs WANG, Shengming ZHANG, Xiaocai JING, Li WEI, Xiaoyang LAU, Hoong Chuin DAI, Bing Tian HUANG, Binbin ZHE, Xiao FU, Xiuju ZHENG, Qin In recent years, there are trends toward cleaner port environments through enforcement by imposed legislation. Transit optimisation of fuel-based port service boats like harbour tugs has emerged as a critical task to reduce fuel consumption and carbon emission. In this paper, an innovative learningbased method, comprising a Reinforcement Learning (RL) model together with a fuel consumption prediction model, was proposed to formulate fuelsaving transit routes. Firstly, an ensemble model is established by combining a Long Short-Term Memory (LSTM) model with a Multilayer Perceptron (MLP) model, predicting fuel use based on tugboat movement and environment factors. Subsequently, an innovative RL based on Deep Deterministic Policy Gradient (DDPG) framework is developed considering the characteristics and obstructions of waterway in Singapore as well as the environmental factors to learn the optimal transit strategy that minimizes fuel consumption. We also demonstrate the effcacy of the solution to generate routes from origin to destination terminals, exhibiting signifcantly reduced fuel consumption in comparison to real-world transit scenarios. 2024-08-31T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/9922 info:doi/10.24963/ijcai.2024/828 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Reinforcement Learning model Fuel consumption prediction Transit route optimisation Artificial Intelligence and Robotics |
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Reinforcement Learning model Fuel consumption prediction Transit route optimisation Artificial Intelligence and Robotics WANG, Shengming ZHANG, Xiaocai JING, Li WEI, Xiaoyang LAU, Hoong Chuin DAI, Bing Tian HUANG, Binbin ZHE, Xiao FU, Xiuju ZHENG, Qin Fuel-saving route planning with data-driven and learning-based approaches – A systematic solution for harbor tugs |
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In recent years, there are trends toward cleaner port environments through enforcement by imposed legislation. Transit optimisation of fuel-based port service boats like harbour tugs has emerged as a critical task to reduce fuel consumption and carbon emission. In this paper, an innovative learningbased method, comprising a Reinforcement Learning (RL) model together with a fuel consumption prediction model, was proposed to formulate fuelsaving transit routes. Firstly, an ensemble model is established by combining a Long Short-Term Memory (LSTM) model with a Multilayer Perceptron (MLP) model, predicting fuel use based on tugboat movement and environment factors. Subsequently, an innovative RL based on Deep Deterministic Policy Gradient (DDPG) framework is developed considering the characteristics and obstructions of waterway in Singapore as well as the environmental factors to learn the optimal transit strategy that minimizes fuel consumption. We also demonstrate the effcacy of the solution to generate routes from origin to destination terminals, exhibiting signifcantly reduced fuel consumption in comparison to real-world transit scenarios. |
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WANG, Shengming ZHANG, Xiaocai JING, Li WEI, Xiaoyang LAU, Hoong Chuin DAI, Bing Tian HUANG, Binbin ZHE, Xiao FU, Xiuju ZHENG, Qin |
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WANG, Shengming ZHANG, Xiaocai JING, Li WEI, Xiaoyang LAU, Hoong Chuin DAI, Bing Tian HUANG, Binbin ZHE, Xiao FU, Xiuju ZHENG, Qin |
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WANG, Shengming |
title |
Fuel-saving route planning with data-driven and learning-based approaches – A systematic solution for harbor tugs |
title_short |
Fuel-saving route planning with data-driven and learning-based approaches – A systematic solution for harbor tugs |
title_full |
Fuel-saving route planning with data-driven and learning-based approaches – A systematic solution for harbor tugs |
title_fullStr |
Fuel-saving route planning with data-driven and learning-based approaches – A systematic solution for harbor tugs |
title_full_unstemmed |
Fuel-saving route planning with data-driven and learning-based approaches – A systematic solution for harbor tugs |
title_sort |
fuel-saving route planning with data-driven and learning-based approaches – a systematic solution for harbor tugs |
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Institutional Knowledge at Singapore Management University |
publishDate |
2024 |
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https://ink.library.smu.edu.sg/sis_research/9922 |
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