Summary :
Summary Research question: How does El Nino affect frequency and magnitude of large swell events on Goleta coast during December, January, February
Preliminary work – investigate relationship between large swell events and El Nino
Following previous study of Seymour et al 1984
Data did not support Seymour’s correlation of large swells with Oceanic Nino Index (ONI)
Seymour used data from Harvest buoy
This study used Goleta Point buoy
Study did showed annual increase of frequency of waves during January – possible change in EN or wave climate
Methodology :
Methodology El Nino can increase large swell events in two ways:
1. number of storms remains constant but magnitude of each storm increases = overall increase of large swell events (over 2m).
2. magnitude of storms remains constant but frequency of storms increase = increased probability of large swell events given the same distribution of swell heights.
Methodology cont’d :
Methodology cont’d Downloaded Goleta buoy data from Coastal Data Information Project (CDIP)
Histogram of daily max wave heights (Hs) showed 74% of measurements below 2 m
Defined large swell event as over 2 m threshold
Summarized number of days over 2 m to measure frequency of large swell events
Graphed frequency against sea surface temperature anomalies (SST) from ONI to investigate correlation
Results :
Results No consistent pattern between anomalous sea surface temperature and frequency of high waves was evident
The 2009/2010 El Nino showed a correlation with increased magnitude and frequency of waves
The 2005-2008 period does not show any consistent relationship
Recognized increasing pattern in frequency of maximum wave heights during the month of January
Discussion and Future Directions :
Discussion and Future Directions The Goleta buoy is affected by wave shadowing from Channel Islands and Point Conception, possibly obscuring El Nino effects
Further research should use Harvest Platform buoy data since it is more exposed to all North Pacific storm activity
longer time series including strong El Nino events (1982-83 or 1997-98) is necessary to understand decadal impacts of El Nino
Data from multiple buoys is needed – one location is not representative of entire region
Parameters such as wave period and swell direction should also be analyzed
The annual increase during January presents an opportunity to assess possible climate change effects
Wave shadowing :
Wave shadowing