Detección y predicción de segmentos de altura de olas extremas

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Áreas de investigación:
Año:
2018
Tipo de publicación:
Artículo en conferencia
Autores:
Editor:
UCOPress. Editorial Universidad de Córdoba
Volumen:
6
Título del libro:
VI Congreso Cientı́fico de Investigadores en Formación
Serie:
Creando Redes Doctorales: La generación del conocimiento
Páginas:
509-512
Organización:
Córdoba, Spain
Mes:
24th-26th January
ISBN:
978-84-9927-239-9
Abstract:
In this work, a methodology for the detection and prediction of Segments containing very high Significant Wave Height (SSWH) values in oceans, is proposed. This procedure is needed to determine potential changes in a long-term future operational environment of marine and coastal structures. The methodology transforms the time series into a sequence of labeled segments, using a genetic algorithm (GA) in combination with a likelihood-based local search. Then, Artificial Neural Networks models (ANN) are trained with a Multiobjective Evolutionary Algorithm (MOEA), with the objective of predicting the occurrence or not of SSWH events. The MOEA is designed to optimize the global accuracy and individual sensitivities for both classes, due to the imbalanced nature of the problem (SSWH are rarer than non SSWH). The methodology is applied to a time series collected from a buoy of the Gulf of Alaska, showing that the GA is able to group SSWH events in a specific cluster and that the MOEA obtains accurate ANN models when predicting these events.
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