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Title Analysis of inland waterway ship performance in ice: Operation Time Window
ID_Doc 66728
Authors Zhang, M; Sun, QY; Garme, K; Burman, M; Zhou, L
Title Analysis of inland waterway ship performance in ice: Operation Time Window
Year 2022
Published
DOI 10.1016/j.oceaneng.2022.112409
Abstract Inland waterway (IWW) shipping is a sustainable opportunity to reduce traffic on, in many times very congested, roads and railways. This is especially true for cities and urban areas. However, for an operator, the ship Oper-ation Time Window (OTW) is important in order to predict possible business cases, especially for regions with long-term winter seasons with icy conditions. The OTW indicates the probable number of navigable days for the ship. The operability is in relation with ship speed, ice thickness, whereas the ship resistance is of significant relevance. This study proposes a model to investigate the possibility of a certain operating condition for ice-going ships based on an Artificial Neural Network (ANN) model and a statistical model. To demonstrate the proposed method for calculating the ship OTW of an IWW, a case study is performed. Ice condition in Lake Ma center dot laren (in Sweden) and an IWW ship designed to maximise its dimension restrictions are used for this case. The Radial Basis Function-Particle swarm optimization (RBF-PSO) ANN model is used to predict ice resistance in level ice con-ditions. Given the ice resistance prediction, a statistical analysis is further conducted regarding to the ice thickness distribution and the operational ship speed distribution to obtain ship OTW. Comparisons are made between semi-empirical ice resistance prediction methods and the ANN model. The influence of different ship speed distribution profiles is investigated by performing a parametric study. The OTW model can be used to evaluate ship operational scenarios in ice-covered waters for ship designers and owners.
Author Keywords Ice-going ships; Inland waterway; Artificial neural network; Ice resistance; Operation time window; Statistical analysis
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000862138800003
WoS Category Engineering, Marine; Engineering, Civil; Engineering, Ocean; Oceanography
Research Area Engineering; Oceanography
PDF https://doi.org/10.1016/j.oceaneng.2022.112409
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