基于Weibull和Rayleigh分布模型的基溪地区风能技术潜力评价

Laban N. Ongaki, C. Maghanga, J. Kerongo
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引用次数: 3

摘要

背景。全球变暖是当今世界日益严重的威胁,主要是由于燃烧化石燃料产生的二氧化碳排放。因此,各国正被迫寻求潜在的替代能源,如风能、太阳能和光伏等。然而,他们的利益的实现面临着挑战。虽然风能有机会解决这个问题,但缺乏足够的场地概况、长期行为信息和具体的数据信息,这些信息可以在场地选择、涡轮机选择和预期功率输出方面做出明智的选择,这仍然是风能开发的一个挑战。本研究采用Weibull和Rayleigh模型。对风速进行了短期的分析和表征,然后对10 m高度的逐日风速的长期逐时序列数据进行了模拟。分析包括将日风数据分组为离散数据,然后计算平均风速、日变化、日变化和月变化。为了验证模型,采用卡方、RMSE、MBE和相关系数等统计工具。并采用测量、关联、预测等方法对数据的可靠性进行检验。10 m高度风速频率分布为2.9 ms-1,标准差为1.5。通过6个月的试验,计算出在10 m轮毂高度的平均风速,发现神户站、基宜大学站和Nyamecheo站分别为1.7 m/s、2.4 m/s和1.3 m/s。该区域的风力密度为29 W/m2。在预测该地区的风力密度方面,瑞利被证明是比威布尔更好的方法。该地点的风速多年来一直在下降。根据外推,该区域显示为风力发电30米的边缘,因此适合非电网连接的电气和机械应用。现场风廓线之间的强相关性证明了数据的可靠性。近年来风力的逐渐减少引起了人们的注意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of the Technical Wind Energy Potential of Kisii Region Based on the Weibull and Rayleigh Distribution Models
Background. Global warming is a growing threat in the world today mainly due to the emission of CO2 caused by the burning of fossil fuel. Consequently, countries are being forced to seek potential alternative sources of energy such as wind, solar, and photovoltaic among many others. However, the realization of their benefits is faced with challenges. Though wind stands a chance to solve this problem, the lack of adequate site profiles, long-term behavioural information, and specific data information that enables informed choice on site selection, turbine selection, and expected power output has remained a challenge to its exploitation. In this research, Weibull and Rayleigh models are adopted. Wind speeds were analyzed and characterized in the short term and then simulated for a long-term measured hourly series data of daily wind speeds at a height of 10 m. The analysis included daily wind data which was grouped into discrete data and then calculated to represent the mean wind speed, diurnal variations, daily variations, and monthly variations. To verify the models, statistical tools of Chi square, RMSE, MBE, and correlational coefficient were applied. Also, the method of measure, correlate, and predict was adopted to check for the reliability of the data used. The wind speed frequency distribution at the height of 10 m was found to be 2.9 ms-1 with a standard deviation of 1.5. From the six months’ experiments, averages of wind speeds at hub heights of 10 m were calculated and found to be 1.7 m/s, 2.4 m/s, and 1.3 m/s, for Ikobe, Kisii University, and Nyamecheo stations, respectively. The wind power density of the region was found to be 29 W/m2. By a narrow margin, Rayleigh proves to be a better method over Weibull in predicting wind power density in the region. Wind speeds at the site are noted to be decreasing over the years. The region is shown as marginal on extrapolation to 30 m for wind energy generation hence adequate for nongrid connected electrical and mechanical applications. The strong correlation between the site wind profiles proves data reliability. The gradual decrease of wind power over the years calls for attention.
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