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On-line Access: 2026-01-26

Received: 2025-06-28

Revision Accepted: 2025-09-18

Crosschecked: 2026-01-27

Cited: 0

Clicked: 640

Citations:  Bibtex RefMan EndNote GB/T7714

 ORCID:

Yiming ZHANG

https://orcid.org/0009-0007-9261-5510

Hao WANG

https://orcid.org/0000-0002-1187-0824

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Journal of Zhejiang University SCIENCE A 2026 Vol.27 No.1 P.1-11

http://doi.org/10.1631/jzus.A2500277


Digital twin-assisted automatic ship size measurement for ship–bridge collision early warning systems


Author(s):  Ruixuan LIAO, Yiming ZHANG, Hao WANG, Jianxiao MAO, Aoyang LI, Zhengyi CHEN

Affiliation(s):  Key Laboratory of Concrete & Prestressed Concrete Structures of Ministry of Education, Southeast University, Nanjing 211189, China; more

Corresponding email(s):   yiming.zhang@seu.edu.cn, wanghao1980@seu.edu.cn

Key Words:  Ship–, bridge collision early warning, Over-height ship monitoring, Ship size measurement, Digital twins, Computer vision, Transfer learning


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Ruixuan LIAO, Yiming ZHANG, Hao WANG, Jianxiao MAO, Aoyang LI, Zhengyi CHEN. Digital twin-assisted automatic ship size measurement for ship–bridge collision early warning systems[J]. Journal of Zhejiang University Science A, 2026, 27(1): 1-11.

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Abstract: 
Long-span bridges are usually constructed over waterways that involve substantial ship traffic, resulting in a risk of collisions between the bridge girders and over-height ships. The consequences of this can be severe structural damage or even collapse. Accurate measurement of ship dimensions is an effective way to monitor approaching over-height ships and avoid collisions. However, the performance of current techniques for estimating the size of moving objects can be undermined by large sensor-to-object distance, limiting their applicability. In this study, we propose a digital twin-assisted ship size measurement framework that can overcome such limitations through a predictive model and virtual-to-real-world transfer learning. Specifically, a 3D synthetic environment is first established to generate a synthetic dataset, which includes ship images, positions, and dimensions. Then the pixel information and spatial coordinates of ships are adopted as regressors, and ship dimensions are selected as the output variables to pre-train deep learning models using the generated dataset. Coordinate system transformations are applied to address dataset bias between the simulated world and real-world, as well as improve the model’s generalization. The pre-trained models are compared using supervised virtual-to-real-world transfer learning to select the version with optimal real-world performance. The mean absolute percentage error is only 3.74% across varying camera-to-ship distances, which demonstrates that the proposed method is effective for over-limit ship monitoring.

用于桥梁防船撞预警的船舶尺寸数字孪生测量方法

作者:廖睿轩1,张一鸣1,王浩1,茅建校1,李翱洋2,陈铮一1,3
机构:1东南大学,混凝土及预应力混凝土结构教育部重点实验室,中国南京,211189;2伊利诺伊大学香槟分校,计算机科学系,美国伊利诺伊州,61801;3香港科技大学,土木与环境工程系,中国香港
目的:大跨度桥梁通常跨越繁忙水道,超高船舶与桥梁主梁发生碰撞的风险长期存在,严重威胁结构运营安全。本文旨在突破远距离传感条件下的尺寸测量精度限制,提出一种数字孪生辅助的船舶尺寸预测框架,以实现对超高船舶的远距离识别与主动防撞预警。
创新点:1.建立三维虚拟代理环境,生成包含船舶图像、位置与尺寸的多源合成数据集,为尺寸预测模型提供训练样本;2.构建模拟与真实数据之间的域映射关系,通过坐标系转换减少虚拟场景与真实场景的域差异;3.利用深度学习模型挖掘船舶空间位置、二维像素信息与尺寸参数之间的非线性关系,并通过虚拟-现实迁移学习实现真实场景船舶尺寸预测。
方法:1.通过建立三维虚拟代理环境生成多源数据,获取船舶图像、尺寸与空间位置信息(图2和7);2.在合成数据集中提取船舶的二维像素与三维坐标特征,构建用于深度学习回归建模的训练样本,并比较不同模型在合成数据上的性能表现(图3~5);3.通过坐标系统一与监督式迁移学习方法,消除虚实数据偏差并提升模型在真实场景中的泛化能力(图7)。
结论:1.深度学习模型能够有效反映船舶空间位置、二维像素信息与尺寸参数之间的非线性映射关系;2.数字孪生辅助船舶尺寸测量框架能够有效结合虚拟仿真数据与有限的实测数据,提升船舶尺寸预测精度,且平均绝对百分比误差仅为3.74%;3.虚实-迁移学习显著减小模拟环境与真实环境之间的数据差异,实现远距离船舶尺寸的高精度测量。

关键词:桥梁防船撞预警;超高船舶监测;船舶尺寸测量;数字孪生;计算机视觉;迁移学习

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