A NEW METHODOLOGY FOR EXTREME WAVES ANALYSIS BASED ON WEATHER-PATTERNS CLASSIFICATION METHODS
ICCE 2016 Cover Image
PDF

Keywords

extremes
waves
weather-patterns

How to Cite

Solari, S., & Alonso, R. (2017). A NEW METHODOLOGY FOR EXTREME WAVES ANALYSIS BASED ON WEATHER-PATTERNS CLASSIFICATION METHODS. Coastal Engineering Proceedings, 1(35), waves.23. https://doi.org/10.9753/icce.v35.waves.23

Abstract

Extreme Value Analysis is usually based on the assumption that the data is independent and homogeneous. Historically the hypothesis of independence has received more attention than the hypothesis of homogeneity. The two most common ways of ensuring independence is to use annual maxima or peaks over threshold approaches. In wave and wind extreme analysis, the usual approaches to achieve homogeneous series have been to work to differentiate according to type of process generating the extreme value (e.g. differentiate between hurricanes and cyclones) and conduct directional analyzes. In this work an alternative approach is proposed, based on the use of cluster analysis methodologies to identify weather circulation patterns that results in extreme wave conditions. The proposed methodology is successfully applied to a case study in the Uruguayan South Atlantic coast. From the obtained results it seems that the proposed methodology is able to differentiate the data in homogenous subsets, not only in terms of the target variable (significant wave height) but also in terms of relevant covariables, like wave direction or sea level, and that the extreme value distribution of the whole data, obtained from the distributions fitted to each subset, is fairly insensitive to the number of weather patterns used in the analysis.
https://doi.org/10.9753/icce.v35.waves.23
PDF

References

Alonso, A., S. Solari and L. Teixeira. 2015. Wave energy resource assessment in Uruguay. Energy 93, 683-696.

Bernardara, P., F. Mazas, X. Kergadallan and L. Hamm. 2014. A two-step framework for over-threshold modelling of environmental extremes. Natural Hazards and Earth System Sciences, 14, 635-647.

Camus, P., M. Menéndez, F.J. Méndez, C. Izaguirre, A. Espejo, V. Cánovas, J. Pérez, A. Rueda, I.J. Losada and R. Medina. 2014. A weather-type statistical downscaling framework for ocean wave climate. Journal of Geophysical Research: Oceans 119, 1-17.

Caravaglia, F., J. Gailhard, E. Paquet, M. Lang, R. Garçon and P. Bernardara. 2010. Introducing a rainfall compound distribution model based on weather patterns sub-sampling. Hydrology and Earth System Sciences, 14, 951-964.

Jonathan, P., K. Ewans, G. Forridstall. 2008. Statistical estimation of extreme ocean environments: The requirement for modelling directionality and other covariate effects. Ocean Engineering 35, 1211-1225.

Pringle, J., D.D. Stretch and A. Bárdossy. 2014. Automatic classification of the atmospheric circulation patters that drive regional wave climates. Natural Hazards and Earth System Sciences, 14, 2145-2155.

Pringle, J., D.D. Stretch and A. Bárdossy. 2014. On linking atmospheric circulation patterns to extreme wave events for coastal vulnerability assessments. Natural Hazards 79, 45-59.

Rueda, A., P. Camus, F.J. Méndez, A. Tomás and A. Luceño. 2016a. An extreme value model for maximum wave heights based on weather types. Journal of Geophysical Research: Oceans 121, 1-12.

Rueda, A., P. Camus, A. Tomás, S. Vitousek, F.J. Méndez. 2016b. A multivariate extreme wave and storm surge climate emulator based on weather patterns. Ocean Modelling 104, 242-251.

Saha, S., S. Moorthi, H-L Pan, X. Wu, J. Wang, S. Nadiga, et al. 2010. The NCEP Climate Forecast System Reanalysis. Bulletin of the American Meteorological Society 91, 1015-1057.

Santoro, P., M. Fossati, I. Piedra-Cueva. 2013. Study of the meteorological tide in the Rio de la Plata. Continental Shelf Research 60, 51-63.

Sartini, L., F. Cassola and G. Besio. 2015. Extreme waves seasonality analysis: An application in the Mediterranean Sea. Journal of Geophysical Research: Oceans 120, 6266-6288.

Solari, S., M. Eguen, M.J. Polo, M.A. Losada. 2017. Peaks Over Threshold (POT): a methodology for automatic threshold estimation using goodness-of-fit p-value. Water Resources Research. Accepted for publication.

Wilks, D.S. 2011.Statistical Methods in the Atmospheric Sciences. Third Edition. Academic Press.

Authors retain copyright and grant the Proceedings right of first publication with the work simultaneously licensed under a Creative Commons Attribution License that allows others to share the work with an acknowledgement of the work's authorship and initial publication in this Proceedings.