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Optimizing Wave Overtopping Energy Converters by ANN Modelling: Evaluating the Overtopping Rate Forecasting as the First Step

José Manuel Oliver, M. Dolores Esteban, José Santos López Gutiérrez, Vicente Negro, M. G. Neves

2021Sustainability16 citationsDOIOpen Access PDF

Abstract

Artificial neural networks (ANN) are extremely powerful analytical, parallel processing elements that can successfully approximate any complex non-linear process, and which form a key piece in Artificial Intelligence models. Its field of application, being very wide, is especially suitable for the field of prediction. In this article, its application for the prediction of the overtopping rate is presented, as part of a strategy for the sustainable optimization of coastal or harbor defense structures and their conversion into Waves Energy Converters (WEC). This would allow, among others benefits, reducing their initial high capital expenditure. For the construction of the predictive model, classical multivariate statistical techniques such as Principal Component Analysis (PCA), or unsupervised clustering methods like Self Organized Maps (SOM), are used, demonstrating that this close alliance is always methodologically beneficial. The specific application carried out, based on the data provided by the CLASH and EurOtop 2018 databases, involves the creation of a useful application to predict overtopping rates in both sloping breakwaters and seawalls, with good results both in terms of prediction error, such as correlation of the estimated variable.

Topics & Concepts

Artificial neural networkPrincipal component analysisWave energy converterField (mathematics)Cluster analysisComputer scienceProcess (computing)Component (thermodynamics)Data miningArtificial intelligenceIndustrial engineeringOperations researchEnergy (signal processing)Machine learningEngineeringStatisticsMathematicsPhysicsPure mathematicsThermodynamicsOperating systemWave and Wind Energy SystemsCoastal and Marine DynamicsOcean Waves and Remote Sensing