Journal of Shanghai Jiao Tong University ›› 2024, Vol. 58 ›› Issue (2): 156-165.doi: 10.16183/j.cnki.jsjtu.2022.316
• Naval Architecture, Ocean and Civil Engineering • Previous Articles Next Articles
SUN Qianyang1, ZHOU Li2(), DING Shifeng1, LIU Renwei1, DING Yi1
Received:
2022-08-19
Revised:
2023-02-17
Accepted:
2023-02-20
Online:
2024-02-28
Published:
2024-03-04
CLC Number:
SUN Qianyang, ZHOU Li, DING Shifeng, LIU Renwei, DING Yi. An Artificial Neural Network-Based Method for Prediction of Ice Resistance of Polar Ships[J]. Journal of Shanghai Jiao Tong University, 2024, 58(2): 156-165.
Tab.2
Source of data set of ice resistance prediction model
船名 | 来源 | 冰况 |
---|---|---|
Ferry NB550 | 文献[ | 平整冰 |
CCGS (Terry Fox) | 文献[ | 平整冰 |
USCGC (Healy) | 平整冰 | |
Korean RV (Araon) | 平整冰 | |
ICE BREAKER PSV(KS1654) | 文献[ | 平整冰 |
MV Arctic | 文献[ | 平整冰 |
Polar Star | 平整冰 | |
Japanese Model Ship | 平整冰 | |
Terry Fox | 平整冰 | |
PM Teshio | 平整冰 | |
R-Class | 平整冰 | |
Healy | 平整冰 | |
SA-15 | 平整冰 | |
Korean RV (Araon) | 文献[ | 碎冰 |
Terry Fox | 文献[ | 碎冰 |
An artic tanker | 文献[ | 平整冰 |
Icebreaking cargo vessel | 文献[ | 碎冰 |
Korean RV (Araon) | 文献[ | 碎冰 |
MT Uikku | 文献[ | 平整冰 |
MT Uikku | 文献[ | 平整冰 |
MT Uikku | 文献[ | 平整冰 |
Korean RV Araon | 文献[ | 平整冰 |
Arctic PSV | 平整冰 | |
Icebreaking cargo vessel | 文献[ | 碎冰 |
A new icebreaker of China | 文献[ | 平整冰 |
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