尼日利亚北部各州风速的随机模拟

I.O. Agada, O. Peter, P.O. Agada
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引用次数: 0

摘要

本文利用37年(1984-2020)风速实时数据,对尼日利亚北部16个州的风速进行了随机建模。建立了研究地点月风速状态的马尔可夫链模型。为了得到马尔可夫链过渡概率,利用波弗特风标将风速数据划分为不同的状态。结果表明,研究地点仅存在前4种风速状态A、B、C和D。通过生成均匀随机数,形成均匀随机状态。每月模拟和实际风速状态的比较清楚地表明,该模式在除尼日尔以外的所有研究地点都正确地模拟了六个月以上的风速。在给定当前风速状态条件下,本文的随机模型可用于生成未来风速状态条件。对风速状态的了解有助于风力发电机的设计和风力发电场场址的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic modelling of wind speed over northern states in Nigeria
This paper presents a stochastic modeling of wind speed over sixteen (16) Northern states in Nigeria using thirty-seven years (1984-2020) wind speed real time data. A Markov Chain Model was developed for the monthly wind speed state across study locations. In order to obtain the Markov chain transitional probabilities, the wind speed data was categories into various states using the Beaufort wind scale. It was observed that only the first four description of wind speed state A, B, C and D exist in the study locations. Uniform random states were also formed by generating uniform random number. The comparison of monthly simulated and actual wind speed state clearly shows that the model simulated over six months correctly across study locations except Niger. Given a current wind speed state conditions, the stochastic models available in this paper can be adapted to generate future wind speed state condition. The understanding of wind speed state helps in wind turbine design and selection of wind farm sites for wind energy generation.
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