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Effect of Water Depth on the Performance of Intelligent Computing Models in Predicting Wave Transmission of Floating Pipe Breakwater
Author(s) -
S.G. Patil,
S. Mandal,
Arkal Vittal Hegde
Publication year - 2014
Publication title -
the international journal of ocean and climate systems
Language(s) - English
Resource type - Journals
eISSN - 1759-314X
pISSN - 1759-3131
DOI - 10.1260/1759-3131.5.2.65
Subject(s) - breakwater , soft computing , support vector machine , transmission (telecommunications) , correlation coefficient , genetic algorithm , selection (genetic algorithm) , artificial neural network , marine engineering , supercomputer , computer science , machine learning , engineering , artificial intelligence , geotechnical engineering , telecommunications , operating system
Understanding the physics of complex system plays an important role in selection of data for training intelligent computing models. Based on the physics of the wave transmission of Horizontally Interlaced Multilayer Moored Floating Pipe Breakwater, a laboratory experiment carried out at Department of Applied Mechanics, National Institute of Technology Surathkal, India, authors felt that relative depth of water (d/L) may have effect on the performance of intelligent computing models. In the present paper, d/L is taken as one of the inputs to study the performance of ANN and Genetic Algorithm based Support Vector Machine Regression (GA-SVMR) model which was ignored by the authors in their previous studies. The performances of present ANN-1 and GA-SVMR-1 models are compared with the previous ANN and GA-SVMR models. The results revealed that there is a slight improvement in the performance of present ANN-1 and GA-SVMR-1 models in terms of Correlation Coefficient

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