一种风力数据序列合成生成的实现

Liang Liang, J. Zhong, Jianing Liu, Puming Li, C. Zhan, Z. Meng
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引用次数: 8

摘要

风电功率波动是大规模风电并网的主要问题。为了验证风电并网方法,需要大量具有时间序列的风数据,这将有助于改进方法。同时,由于大多数风电场的运行历史较短以及数据采集的限制,从风电场获得的数据不能满足数据分析的需要。因此,风力数据序列的合成生成可能是解决这一问题的有效方法之一。本文提出了一种利用马尔可夫链生成风数据序列的方法。由于高阶马尔可夫链,为风力发电场设计的可能性矩阵可能会占用大量内存,这是当前计算机技术的一个问题。本文将引入动态列表来减少对内存的需求。在控制中心和风力发电场之间的长距离信号传输中,通信错误是不可避免的。在历史风资料序列中,数据丢失是常见的现象。利用这些数据生成风数据序列,在概率矩阵中查找相关元素时可能会出现一些错误。本文将采用一种自适应方法来解决这一问题。将使用一组一年的历史数据来验证所提出的方法。结果表明,该方法可以有效地生成风数据序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An implementation of synthetic generation of wind data series
Wind power fluctuation is a major concern of large scale wind power grid integration. To test methods proposed for wind power grid integration, a large amount of wind data with time series are necessary and will be helpful to improve the methods. Meanwhile, due to the short operation history of most wind farms as well as limitations of data collections, the data obtained from wind farms could not satisfy the needs of data analysis. Consequently, synthetic generation of wind data series could be one of the effective solutions for this issue. In this paper, a method is presented for generating wind data series using Markov chain. Due to the high order Markov chain, the possibility matrix designed for a wind farm could cost a lot of memory, which is a problem with current computer technologies. Dynamic list will be introduced in this paper to reduce the memory required. Communication errors are un-avoidable on long way signal transmission between the control centre and wind farms. Missing of data always happens in the historical wind data series. Using these data to generate wind data series may result in some mistakes when searching related elements in the probability matrix. An adaptive method will be applied in this paper to solve the problem. The proposed method will be verified using a set of one-year historical data. The results show that the method could generate wind data series in an effective way.
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