Statistical modeling of global mean wave height considering principal component analysis of sea level pressures and its application to future wave height projection

Future wave climate projection is important for climate impact assessment of the coastal hazards and environment. In this study, monthly averaged wave heights are estimated by a linear multi-regression model using atmospheric data as explanatory variables. The present statistical model considers loc...

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Bibliographic Details
Main Authors: Kishimoto, Risako, Shimura, Tomoya, Mori, Nobuhito, Mase, Hajime
Other Authors: 岸本, 理紗子, 志村, 智也, 森, 信人, 間瀬, 肇
Format: Article in Journal/Newspaper
Language:English
Published: Japan Society of Hydrology and Water Resources 2017
Subjects:
Online Access:http://hdl.handle.net/2433/219508
Description
Summary:Future wave climate projection is important for climate impact assessment of the coastal hazards and environment. In this study, monthly averaged wave heights are estimated by a linear multi-regression model using atmospheric data as explanatory variables. The present statistical model considers local atmospheric information (wind speed at 10 m height, sea level pressure) and large scale atmospheric information obtained from principal component analysis (PCA) of the global sea level pressure field. The representation of swell in the lower latitude is greatly improved by introducing the large scale atmospheric information from the PCA. The present statistical model was applied to the results of the Japan Meteorological Research Institute’s Atmospheric General/Global Circulation Model (MRI-AGCM) climate change projection. The future change of wave heights shows an increase in the northern North Pacific Ocean and a decrease in the North Atlantic Ocean, middle latitude and tropics of the Pacific Ocean.