A Machine-Learning Model for Zonal Ship Flow Prediction Using AIS Data: A Case Study in the South Atlantic States Region
Abstract
:1. Introduction
- (1)
- It proposes a novel method that can accurately capture the changes of traffic volume based on spatiotemporal variations to make short-term and long-term predictions of future ship flow during both normal conditions and extreme weather events.
- (2)
- We customized the method to predict daily and hourly ship flow during normal and extreme weather conditions and provide recommendations regarding the use of such method.
2. Related Work
3. Method
3.1. Traffic Flow Analysis
3.1.1. ROI Identification
3.1.2. Spatial Distribution of Traffic Flow
3.1.3. Time Series Analysis
3.1.4. Impacts of Extreme Weather Conditions
3.2. Our Proposed Model
4. Model Evaluation
4.1. Group 1: Daily Ship Flow Prediction
4.2. Group 2: Hourly Ship Flow Prediction
4.3. Discussion and Recommendations
5. Conclusions and Future Work
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Appendix B
Appendix C
Appendix D
RMSE | MAE | |||
---|---|---|---|---|
ID | 1 Day | 3 Days | 1 Day | 3 Days |
l3_Z1 | MLP | MLP | MLP | MLP |
l3_Z2 | MLP | ARIMA | ARIMA | ARIMA |
l3_Z3 | MHCNN | MHCNN | ARIMA | ARIMA |
l3_Z4 | MLP | ARIMA | MHCNN | MHCNN |
l3_Z5 | ARIMA | MHCNN | ARIMA | MHCNN |
l3_Z6 | MHCNN | MHCNN | MHCNN | MHCNN |
l3_Z7 | MHCNN | MHCNN | MHCNN | MHCNN |
l3_Z8 | MHCNN | MHCNN | MHCNN | MHCNN |
l3_Z9 | MHCNN | LSTM | LSTM | MLP |
l3_Z10 | MLP | LSTM | ARIMA | MLP |
l3_Z11 | ARIMA | MHCNN | ARIMA | MHCNN |
Appendix E
RMSE | MAE | |||
---|---|---|---|---|
ID | 1 Day | 3 Days | 1 Day | 3 Days |
l4_Z1 | MLP | MLP | MHCNN | MLP |
l4_Z2 | MLP | MLP | ConvLSTM | MLP |
l4_Z3 | ARIMA | MLP | LSTM | MLP |
l4_Z4 | MLP | MHCNN | ARIMA | MLP |
l4_Z5 | ConvLSTM | ARIMA | ConvLSTM | ARIMA |
l4_Z6 | MLP | LSTM | LSTM | LSTM |
l4_Z7 | MLP | SGD | ARIMA | MHCNN |
l4_Z8 | ARIMA | ARIMA | ARIMA | ARIMA |
l4_Z9 | MHCNN | MHCNN | MHCNN | MLP |
l4_Z10 | MHCNN | SGD | MHCNN | SGD |
l4_Z11 | ARIMA | SGD | LSTM | MHCNN |
l4_Z12 | MHCNN | ARIMA | MHCNN | LSTM |
l4_Z13 | ARIMA | ConvLSTM | ARIMA | LSTM |
l4_Z14 | MHCNN | MHCNN | MHCNN | MHCNN |
l4_Z15 | MHCNN | ARIMA | ARIMA | ConvLSTM |
l4_Z16 | LSTM | MLP | ARIMA | MLP |
l4_Z17 | LSTM | ARIMA | ConvLSTM | MLP |
l4_Z18 | MLP | MLP | MLP | MLP |
l4_Z19 | ARIMA | MHCNN | MLP | MHCNN |
l4_Z20 | MHCNN | MHCNN | MHCNN | MHCNN |
l4_Z21 | MHCNN | MHCNN | ARIMA | MHCNN |
Appendix F
RMSE | MAE | |||
---|---|---|---|---|
ID | 4 hours | 8 hours | 4 hours | 8 hours |
Z1 | ARIMA | ConvLSTM | ARIMA | ConvLSTM |
Z2 | ARIMA | SGD | ARIMA | MLP |
Z3 | MLP | MLP | MLP | MLP |
Z4 | ARIMA | LASSO | ARIMA | LASSO |
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Dataset | Spatial (Coverage) | Temporal (Frequency, Start and End Time) | Central Zone Count | Surrounding Zone Count |
---|---|---|---|---|
Level 3 Hexagons | South Atlantic States Region | Daily ship flow data for 2019 and hourly ship flow data for September, 2019 | 11 | 66 |
Level 4 Hexagons | South Atlantic States Region | Daily ship flow data for 2019 and hourly ship flow data for September, 2019 | 21 | 126 |
Factor | Scale | Note |
---|---|---|
Time series flow data | Daily and hourly | Produce daily and hourly total ship flow within the zones |
Extent of hurricane paths | Distance of 5 using level 3 hexagonal zones | Use the extent to search if hurricane is in the range and produce a binary result. |
Existing boundaries | Level 3 and 4 hexagonal zones | 11 sets of level 3 and 21 sets of level 4 are produced. |
3-day | 2-day | 1-day | 4 hours | 8 hours | |
---|---|---|---|---|---|
Normal Model + Normal Days | mh-CNN | mh-CNN | mh-CNN | mh-CNN | mh-CNN |
Normal Model + Hurricane Days | n/a | n/a | n/a | ARIMA | MLP |
Hurricane Model + Hurricane Days | n/a | n/a | n/a | mh-CNN | mh-CNN |
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Wang, X.; Li, J.; Zhang, T. A Machine-Learning Model for Zonal Ship Flow Prediction Using AIS Data: A Case Study in the South Atlantic States Region. J. Mar. Sci. Eng. 2019, 7, 463. https://doi.org/10.3390/jmse7120463
Wang X, Li J, Zhang T. A Machine-Learning Model for Zonal Ship Flow Prediction Using AIS Data: A Case Study in the South Atlantic States Region. Journal of Marine Science and Engineering. 2019; 7(12):463. https://doi.org/10.3390/jmse7120463
Chicago/Turabian StyleWang, Xuantong, Jing Li, and Tong Zhang. 2019. "A Machine-Learning Model for Zonal Ship Flow Prediction Using AIS Data: A Case Study in the South Atlantic States Region" Journal of Marine Science and Engineering 7, no. 12: 463. https://doi.org/10.3390/jmse7120463
APA StyleWang, X., Li, J., & Zhang, T. (2019). A Machine-Learning Model for Zonal Ship Flow Prediction Using AIS Data: A Case Study in the South Atlantic States Region. Journal of Marine Science and Engineering, 7(12), 463. https://doi.org/10.3390/jmse7120463