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http://dx.doi.org/10.7319/kogsis.2017.25.1.003

Production of Future Wind Resource Map under Climate Change over Korea  

Kim, Jin Young (New and Renewable Energy Data Center, Korea Institute of Energy Research)
Kim, Do Yong (Department of Environmental Engineering, Mokpo National University)
Publication Information
Journal of Korean Society for Geospatial Information Science / v.25, no.1, 2017 , pp. 3-8 More about this Journal
Abstract
In this study future wind resource maps have been produced under climate change scenario using ensemble regional climate model weather research and forecasting(WRF) for the period from 2045 to 2054(mid 21st century). Then various spatiotemporal analysis has been conducted in terms of monthly and diurnal. As a result, monthly variation(monsoon circulation) was larger than diurnal variation(land-sea circulation) throughout the South Korea. Strong wind area with high wind power energy was varied on months and regions. During whole years, strong wind with high wind resource was pronounced at cold(warm) months in particular Gangwon mountainous and coastal areas(southwestern coastal area) driven by strong northwesterly(southwesterly). Projected strong and weak wind were presented in January and September, respectively. Diurnal variation were large over inland and mountainous area while coastal area were small. This new monthly and diurnal variation would be useful to high resource area analysis and long-term operation of wind power according to wind variability in future.
Keywords
Future Wind Resource Map; Mesoscale Numerical Simulation; Ensemble; Climate Change;
Citations & Related Records
연도 인용수 순위
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