Comparative analysis among deterministic and stochastic collision damage models for oil tanker and bulk carrier reliability

The incidence of collision damage models on oil tanker and bulk carrier reliability is investigated considering the IACS deterministic model against GOALDS/IMO database statistics for collision events, substantiating the probabilistic model. Statistical properties of hull girder residual strength ar...

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Veröffentlicht in:International journal of naval architecture and ocean engineering 2018, 10(1), , pp.21-36
Hauptverfasser: Campanile, A., Piscopo, V., Scamardella, A.
Format: Artikel
Sprache:eng
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Zusammenfassung:The incidence of collision damage models on oil tanker and bulk carrier reliability is investigated considering the IACS deterministic model against GOALDS/IMO database statistics for collision events, substantiating the probabilistic model. Statistical properties of hull girder residual strength are determined by Monte Carlo simulation, based on random generation of damage dimensions and a modified form of incremental-iterative method, to account for neutral axis rotation and equilibrium of horizontal bending moment, due to cross-section asymmetry after collision events. Reliability analysis is performed, to investigate the incidence of collision penetration depth and height statistical properties on hull girder sagging/hogging failure probabilities. Besides, the incidence of corrosion on hull girder residual strength and reliability is also discussed, focussing on gross, hull girder net and local net scantlings, respectively. The ISSC double hull oil tanker and single side bulk carrier, assumed as test cases in the ISSC 2012 report, are taken as reference ships. •Hull girder residual strength.•Oil tanker and bulk carrier reliability in damage conditions.•Deterministic and probabilistic collision damage models.•Corrosion wastage and random material properties.•Monte Carlo simulation.
ISSN:2092-6782
2092-6790
DOI:10.1016/j.ijnaoe.2017.03.010