Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6851524 | Technology in Society | 2016 | 16 Pages |
Abstract
The ten-year monthly mean wind speed data at 10, 50,100, 150 and 300Â m heights over a typical year were statistically analyzed in this study to determine the potential for wind power generation at two locations (Urumqi and Xining) in China, using the two-parameters Weibull distribution function. The shape factor k and scale factor c were estimated by the maximum likelihood method. Fourteen small to medium sized commercially available wind turbines were selected for the two regions, and their mean energy outputs and capacity factors were all analyzed. Results showed that the maximum monthly mean wind speeds at different heights in Urumqi and Xining occur in November and December, respectively; while the minimum values of the two locations occur in June and July, respectively. The wind power class and potential of Urumqi and Xining are “class 1” and “poor” and “class 2” and “Marginal”, respectively. Urumqi is not suitable for large-scale electric wind-power application; however, small-scale wind turbines or wind-hybrid power systems might be a reasonable option for this site for supplying power. Xining has a better wind resource than Urumqi, and medium-scale wind turbines might be a reasonable option in Xining for supplying more electric energy. The mean energy outputs for the selected wind turbines range from 491Â kWh/yr to 87,333Â kWh/yr in Urumqi, while the values range from 1,071Â kWh/yr to 167,237Â kWh/yr in Xining. The capacity factors for these wind turbines in Urumqi and Xining range from 4.3% to 19.5% and 10.4%-27.9%, respectively. The aim of this paper is to promote the development of wind power in China by contributing to scholarly understanding of its impact on the geographical regions studied.
Related Topics
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Authors
Chong Li, Youying Liu, Gang Li, Jianyan Li, Dasheng Zhu, Wenhua Jia, Guo Li, Youran Zhi, Xinyu Zhai,