Wind models and cross-site interpolation for the refugee reception islands in Greece
In this study, the wind data series from five locations in Aegean Sea islands, the most active `hotspots' in terms of refugee influx during the Oct/2015 - Jan/2016 period, are investigated. The analysis of the three-per-site data series includes standard statistical analysis and parametric distributions, auto-correlation analysis, cross-correlation analysis between the sites, as well as various ARMA models for estimating the feasibility and accuracy of such spatio-temporal linear regressors for predictive analytics. Strong correlations are detected across specific sites and appropriately trained ARMA(7,5) models achieve 1-day look-ahead error (RMSE) of less than 1.9 km/h on average wind speed. The results show that such data-driven statistical approaches are extremely useful in identifying unexpected and sometimes counter-intuitive associations between the available spatial data nodes, which is very important when designing corresponding models for short-term forecasting of sea condition, especially average wave height and direction, which is in fact what defines the associated weather risk of crossing these passages in refugee influx patterns.
Jul-25-2017
- Country:
- Atlantic Ocean > Mediterranean Sea
- Aegean Sea (0.25)
- Europe > Greece (0.41)
- Atlantic Ocean > Mediterranean Sea
- Genre:
- Research Report > New Finding (0.70)
- Industry:
- Technology:
- Information Technology
- Artificial Intelligence > Machine Learning (1.00)
- Data Science > Data Mining (0.68)
- Software (1.00)
- Information Technology