Huang, Wenjing, Wei, Changyun, Shen, Kaijun, Liu, Zenghui, Ji, Ze ![]() |
Abstract
In cutter suction dredger (CSD) operations, direct visual assessment of underwater soil composition and terrain is unavailable to operators. This limitation necessitates reliance on indirect indicators, such as concentration meter readings, interpreted through the operator’s accumulated experience. However, concentration meters are typically installed at the stern of CSDs rather than near the cutter head, introducing significant time delays in the recorded signals. Consequently, these signals fail to provide real-time feedback on the cutter head’s excavation states. To address this challenge, this paper proposes a novel framework based on long sequence time-series forecasting for multi-step prediction of dredged slurry concentration. The framework aims to enable early assessment of underwater excavation states, thereby supporting timely decision making by operators. The study begins by identifying characteristic indicators related to slurry concentration through a detailed analysis of the excavation process. These indicators are then screened to construct a subset of relevant features. Furthermore, a velocity-integrated time compensation method is used to temporally align concentration data with other feature data. The proposed ITCNet model is evaluated against four baseline models using real-world construction data from CSD operations. Results demonstrate that the ITCNet delivers consistent multi-step predictions with minimal errors over a 15 s horizon, providing operators with ample time to respond to dynamic changes. Compared to baseline models, the ITCNet achieves superior accuracy across key metrics, empowering operators to make proactive and informed decisions.
Item Type: | Article |
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Date Type: | Published Online |
Status: | In Press |
Schools: | Schools > Engineering |
Publisher: | ICE Publishing |
ISSN: | 1741-7597 |
Date of Acceptance: | 26 April 2025 |
Last Modified: | 01 Jul 2025 09:15 |
URI: | https://orca.cardiff.ac.uk/id/eprint/179435 |
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