On Correlation between Wind and Wave Storms
Abstract
:1. Introduction
2. Wind and Wave Data and Study Area
3. Methodology: Wind and Wave Storm Identification and Association Criteria
4. Data Analysis
4.1. Variability of Storm Number and Correlation Parameters Assuming Different Thresholds
- Wind storms are identified as a “sequence of wind states with average wind speed exceeding the critical threshold ucrit”. Those having a too short duration (less than 12 h) and of those not satisfying the condition of established minimum time separation (48 h intended as time distance between peaks) are removed. Note that, when two wind storm peaks have a time separation less than 48 h, the one characterized by the highest value of maximum wind speed is kept in the sample and the other one is eliminated.
- The storm sample prepared following the procedure described above is divided in two subsamples: one including the wind storms during whose time window none of the significant wave height values exceed the critical threshold hcrit, and the other constituted by all wind storms during which at least one significant wave height value is over hcrit. The last subsample is assumed to be made up of those wind storms which generate a wave storm.
- For each wind storm in the second subsample the corresponding complete storm event is extrapolated from the significant wave height time series. Specifically, starting from the time instant at which the maximum Hs value is detected in the wind storm time window, Hs data are processed backward and forward the preceding and the following time instants at which Hs is below hcrit. Note that, the last two time instants define the time window over which the wave storm event evolves and the related duration.
- Finally, some parameters are calculated to characterize the events. They are: maximum wind speed umax in the wind storm, wind storm duration Dwind, maximum significant wave height Hsmax in the wave storm, wave storm duration Dwave, time distance Δt umax − Hs max between umax, and Hs max. Note that, Δt umax − Hs max is calculated as t (Hsmax) − t(umax), thus if Hs max occurs after umax it is greater than 0, negative if umax occurs after Hs max, and equal to 0 if they occur simultaneously.
4.2. Trend and Correlation between Wind and Wave Storm Parameters Associated with Selected Thresholds
- Maximum wind speed umax;
- Wind storm duration Dwind;
- Maximum significant wave height Hsmax;
- Wave storm duration Dwave;
- Time distance Δtu max − Hs max between wind storm and wave storm peaks (Hsmax, umax);
- Standard deviation of wind speed σwind;
- Standard deviation of significant wave height σwave;
- Correlation coefficient ρ(u(t), Hs(t)) between time histories of wind speed and significant wave height over a time window including the whole evolution of both wind and wave storms. In this regard it is important to specify that this time window could include a time interval in which either the wind speeds or the significant wave heights are below their critical thresholds.
- The wave storm peak Hsmax increases with the wind storm peak umax;
- The wave storm duration Dwave increases with the wind storm duration Dwind;
- Considering a given storm event the significant wave height standard deviation σwave is always less than the wind speed σwind standard deviation. This result is interesting in the context of offshore renewables energies because it indicates which energy source is more regular and justifies the interest in combined systems to the aim of smoothing the power output.
- The time distance Δt umax − Hs max may be greater than one day, in most of the storms shorter than 10 h in absolute value;
- The correlation ρ(u(t), Hs(t)) increases with the wind storm intensity umax.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Buoy | Time | Latitude | Longitude | Anemometer Height [m] | Water Depth [m] |
---|---|---|---|---|---|
44004 | 28 March 2003–31 December 2020 | 38.484 N | 70.433 W | 5 | 3182.1 |
44008 | 18 August 1982–31 December 2020 | 40.498 N | 69.251 W | 4.1 | 68.9 |
44014 | 01 October 1990–31 December 2020 | 36.609 N | 74.842 W | 3.2 | 47 |
41025 | 28 March 2003–31 December 2020 | 35.010 N | 75.454 W | 3.8 | 48.8 |
Buoy | Hs [m] | U [m/s] |
---|---|---|
44004 | 2.05 | 7.33 |
44008 | 1.71 | 6.39 |
44014 | 1.44 | 6.16 |
41025 | 1.51 | 7.35 |
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Laface, V.; Arena, F. On Correlation between Wind and Wave Storms. J. Mar. Sci. Eng. 2021, 9, 1426. https://doi.org/10.3390/jmse9121426
Laface V, Arena F. On Correlation between Wind and Wave Storms. Journal of Marine Science and Engineering. 2021; 9(12):1426. https://doi.org/10.3390/jmse9121426
Chicago/Turabian StyleLaface, Valentina, and Felice Arena. 2021. "On Correlation between Wind and Wave Storms" Journal of Marine Science and Engineering 9, no. 12: 1426. https://doi.org/10.3390/jmse9121426
APA StyleLaface, V., & Arena, F. (2021). On Correlation between Wind and Wave Storms. Journal of Marine Science and Engineering, 9(12), 1426. https://doi.org/10.3390/jmse9121426