Repository logoCyprus University of Technology
Log In(current)
Ελληνικά
English
  1. Home
  2. Cyprus University of Technology (Research Output)
  3. Άρθρα/Articles
  4. Coastal zone significant wave height prediction by supervised machine learning classification algorithms
  • Details

Coastal zone significant wave height prediction by supervised machine learning classification algorithms

Journal
Ocean Engineering
Date Issued
February 1, 2021
Author(s)
Demetriou, Demetris  
Michailides, Constantine  
Papanastasiou, George  
Onoufriou, Toula  
DOI
10.1016/j.oceaneng.2021.108592
Abstract
Explicit wave models and expensive sensor equipment capable of predicting and measuring wave parameters often carry a prohibitive computational and financial expense. To counter this, this paper proposes an alternative method for nowcasting coastal zone significant wave heights through the joint use of meteorological and structural data in the training of supervised machine learning models. In testing the hypothesis that structural data can improve model classification, artificial neural network and decision tree models were developed, trained and tested on field data recorded on a coastal jetty located in the southern coasts of Cyprus. A comprehensive investigation of the different models yields that the joint use of meteorological and structural features can improve classification performance, regardless of the network choice. It is also demonstrated that redundancy of training parameters could inject unwanted overfitting, reducing model generalization. To address this, a method for quantifying feature importance has been proposed by exploiting the nature of decision tree algorithms and the Gini impurity index, reaffirming that structural features do indeed benefit model classification. These results highlight the potential of tapping into the untapped pool of structural data for significant wave height prediction, paving the way for new research to be undertaken in this direction.
Subjects

Machine learning

Significant wave heig...

Neural networks

Classification algori...

Gini impurity index

Decision tree

Explore by
  • Collections
  • Research Outputs
  • Researchers
  • Faculty & Departments
  • Theses
  • Patents
  • Projects
  • Journals
  • Conferences
Useful Links
  • Researcher Portfolio Guide
  • Researcher Profile
  • Create an ORCID ID
  • CUT Open Access Author Fund
  • ETDS Guide
Copyright Policies

Use Sherpa/Romeo to find publisher copyright policies

Go
Go
  • SPARC Author Addendum Engine
  • National Open Access Policy in Cyprus
Deposit your work to Ktisis
  • Self-archiving. Please sign in to Ktisis.
  • Email your work to:
    library.dspace@cut.ac.cy
  • Contact your subject librarian

Member of

OpenAIREre3dataOpenDOARCOREDART
Cyprus University of Technology
Library and
Information
Services

Copyright © 2022 - Library and Information Services Feedback - Built with DSpace-CRIS - 4Science

  • Accessibility settings
  • Privacy policy
  • End User Agreement
COAR NotifyCOAR Notify