Characterization of Extreme Wave Conditions for Wave Energy Converter Design and Project Risk Assessment
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Corporate Authors
North Carolina State University
Pennsylvania State University
Pacific Northwest National Laboratory
Sandia National Laboratories
Publication date
2020
Publisher
Journal of Marine Science and Engineering
Journal
Spatial Coverage
Geographical Scope
Multi-Regional
Sea Region
Northeast Pacific Ocean (180W)
Northwest Atlantic Ocean (40W)
Northwest Atlantic Ocean (40W)
Categories
Categories
water body
Discipline
Parameter discipline
Physical Oceanography
Instruments and Platforms
Instrument
Ocean models
Physical oceanographic models
Physical oceanographic models
Platform
moored surface buoy
Methods Status
Maturity Level
Level 4: Better Practice - Developed and Adopted
Abstract
Best practices and international standards for determining n-year return period extreme wave (sea states) conditions allow wave energy converter designers and project developers the option to apply simple univariate or more complex bivariate extreme value analysis methods. The present study compares extreme sea state estimates derived from univariate and bivariate methods and investigates the performance of spectral wave models for predicting extreme sea states at buoy locations within several regional wave climates along the US East and West Coasts. Two common third-generation spectral wave models are evaluated, a WAVEWATCH III®model with a grid resolution of 4 arc-minutes (6–7 km), and a Simulating WAves Nearshore model, with a coastal resolution of 200–300 m. Both models are used to generate multi-year hindcasts, from which extreme sea state statistics used for wave conditions characterization can be derived and compared to those based on in-situ observations at National Data Buoy Center stations. Comparison of results using different univariate and bivariate methods from the same data source indicates reasonable agreement on average. Discrepancies are predominantly random. Large discrepancies are common and increase with return period. There is a systematic underbias for extreme significant wave heights derived from model hindcasts compared to those derived from buoy measurements. This underbias is dependent on model spatial resolution. However, simple linear corrections can effectively compensate for this bias. A similar approach is not possible for correcting model-derived environmental contours, but other methods, e.g., machine learning, should be explored.
Description
Keywords
License
CC-BY 4.0

Citation
Neary, V.S.; Ahn, S.; Seng, B.E.; Allahdadi, M.N.; Wang, T.; Yang, Z.; He, R. (2020) Characterization of Extreme Wave Conditions for Wave Energy Converter Design and Project Risk Assessment. Journal of Marine Science and Engineering, 8: 289, 19pp. DOI:https://doi.org/10.3390/jmse8040289
Variables
Applications
MSFD
Descriptor 7: Hydrographical conditions
MSP
Climate Change Adaptation and Mitigation
Scientific Research and Monitoring
Scientific Research and Monitoring
GOOS Application
Climate prediction and projection
Operational ocean data and forecasting
Coastal management
Operational ocean data and forecasting
Coastal management
GOOS EOV Phenomena
Ocean Obs Societal Need
Vulnerable communities
Operational needs
Climate
Operational needs
Climate
Sustainable Development Goals
Goal 14. Conserve and sustainably use the oceans, seas and marine resources for sustainable development
Goal 14. Conserve and sustainably use the oceans, seas and marine resources for sustainable development::14.a Increase scientific knowledge, develop research capacity and transfer marine technology, taking into account the Intergovernmental Oceanographic Commission Criteria and Guidelines on the Transfer of Marine Technology, in order to improve ocean health and to enhance the contribution of marine biodiversity to the development of developing countries, in particular small island developing States and least developed countries
Goal 14. Conserve and sustainably use the oceans, seas and marine resources for sustainable development::14.a Increase scientific knowledge, develop research capacity and transfer marine technology, taking into account the Intergovernmental Oceanographic Commission Criteria and Guidelines on the Transfer of Marine Technology, in order to improve ocean health and to enhance the contribution of marine biodiversity to the development of developing countries, in particular small island developing States and least developed countries::14.a.1 Proportion of total research budget allocated to research in the field of marine technology
Goal 14. Conserve and sustainably use the oceans, seas and marine resources for sustainable development::14.a Increase scientific knowledge, develop research capacity and transfer marine technology, taking into account the Intergovernmental Oceanographic Commission Criteria and Guidelines on the Transfer of Marine Technology, in order to improve ocean health and to enhance the contribution of marine biodiversity to the development of developing countries, in particular small island developing States and least developed countries
Goal 14. Conserve and sustainably use the oceans, seas and marine resources for sustainable development::14.a Increase scientific knowledge, develop research capacity and transfer marine technology, taking into account the Intergovernmental Oceanographic Commission Criteria and Guidelines on the Transfer of Marine Technology, in order to improve ocean health and to enhance the contribution of marine biodiversity to the development of developing countries, in particular small island developing States and least developed countries::14.a.1 Proportion of total research budget allocated to research in the field of marine technology