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Md. Alhaz Uddin

M.Sc Student
Department of Civil Engineering,
Faculty of Engineering,
University of Malaya,
50603 Kuala Lumpur,
Malaysia
mauce52@yahoo.com

Journal articles

2012
Md Alhaz Uddin, Mohammed Jameel, Hashim Abdul Razak, A B M Saiful Islam (2012)  Response Prediction of Offshore Floating Structure using Artificial Neural Network   Advanced Science Letters In Press, Corrected proof:  
Abstract: For deep-water oil and gas exploration, spar platform is considered to be the most economic and suitable floating offshore structure. Analysis of spar platform is complex due to various nonlinearities such as geometric, variable submergence, varying pretention, etc. The Finite Element Method (FEM) is an important technique to deal with this type of analysis. However, FEM is computationally very expensive and highly time-consuming process. Artificial Neural Network (ANNs) can provide meaningful solutions and can process information in extremely rapid mode ensuring high accuracy of prediction. This paper presents dynamic response prediction of spar mooring line using ANN. FEM-based time domain response of spar platform such as surge, heave and pitch is trained by ANN. Mooring line top tension is predicted after 7200 sec (2 hours) of wave loading. The response obtained using ANN is validated by conventional FEM analysis. Results show that ANN approach is found to be very efficient and it significantly reduces the time for predicting long response time histories. Thus ANN approach is recommended for efficient designing of floating structures.
Notes:
2011
2010

Book chapters

2010

Conference papers

2011
2009
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