An alternative method for the prediction of a ship's dynamic bending stresses at sea is presented and examined in this paper. The method uses a ship's heave and pitch motion to determine the dynamic bending moment at a point along the ship's length. This can be combined with the known still water bending moment, and known ship sectional properties to determine deck and keel stresses. A combination of mathematical modeling, the random decrement, and neural network techniques have been used to determine the relationship between ship motion and bending moment, without any prior knowledge of the wave excitation level To test this method, two sets of model experiments have been used. One set from a Great Lakes bulk carrier, the other from a Canadian patrol frigate. In each experiment, the mean and variance of the bending moment have been successfully predicted, demonstrating this method as a valid approach.
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SNAME 25th American Towing Tank Conference
October 24–25, 1998
Iowa City, Iowa, USA
Dynamic Bending Moment Identification Using Neural Networks Available to Purchase
Frederick Rogers;
Frederick Rogers
American Bureau of Shipping
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Mahmoud Haddara;
Mahmoud Haddara
Memorial University of Newfoundland
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David Molyneux
David Molyneux
Institute for Marine Dynamics
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Paper presented at the SNAME 25th American Towing Tank Conference, Iowa City, Iowa, USA, October 1998.
Paper Number:
SNAME-ATTC-1998-022
Published:
October 24 1998
Citation
Rogers , Frederick , Haddara, Mahmoud, and David Molyneux. "Dynamic Bending Moment Identification Using Neural Networks." Paper presented at the SNAME 25th American Towing Tank Conference, Iowa City, Iowa, USA, October 1998. doi: https://doi.org/10.5957/ATTC-1998-022
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