Stochastic time series reconstruction of future wind farm output

Xueting Li, Hongtao Wang
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引用次数: 9

Abstract

To study the potential impact of the ever-increasing wind farm on future power grid, realistic long term time series of future wind generation at individual sites as well as for the system as a whole are required. This paper proposes a method to simulate time series of hourly wind speed. An ARMA(p, q) model with transformation procedure to a stationary process is chose to simulate the hourly wind speed for it can reflect the time sequential, statistical and stochastic characteristics. Ten years of hourly wind speed data are used to collect characteristic indices such as seasonal and diurnal patterns, autocorrelation and partial autocorrelation parameters. Wind farm output data in a whole year are reconstructed with diurnal and monthly pattern features. Comparison is made between the generated and real series of wind power in an aspect of probability distribution. The result demonstrates that the method is proper.
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未来风电场产量的随机时间序列重建
为了研究日益增长的风电场对未来电网的潜在影响,需要对个别地点以及整个系统的未来风力发电进行现实的长期时间序列分析。本文提出了一种逐时风速时间序列的模拟方法。由于ARMA(p, q)模型能反映时序性、统计性和随机性等特点,因此选择ARMA(p, q)模型进行逐时风速模拟,并将其转化为平稳过程。利用10年逐时风速资料,收集了风速的季节型和日型、自相关和部分自相关参数等特征指数。对风电场全年输出数据进行了逐日和逐月重构。从概率分布的角度对风力发电与实际序列进行了比较。结果表明,该方法是正确的。
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