ARIMA-Based Frequency-Decomposed Modeling of Wind Speed Time Series

被引:140
|
作者
Yunus, Kalid [1 ]
Thiringer, Torbjorn [1 ]
Chen, Peiyuan [1 ]
机构
[1] Chalmers, Dept Elect Power Engn, S-41296 Gothenburg, Sweden
关键词
Auto correlation coefficient (ACC); auto regressive integrated moving average (ARIMA); CDF; partial auto correlation coefficient (PACC); PDF; Q-Q plot; time-series model; wind power; wind speed; MARKOV-CHAIN MODELS; POWER-SYSTEMS; ADEQUACY ASSESSMENT; DISTRIBUTIONS; GENERATION; STATISTICS;
D O I
10.1109/TPWRS.2015.2468586
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
In this paper, a modified auto regressive integrated moving average (ARIMA) modeling procedure that can capture time correlation and probability distribution of observed wind-speed time-series data is presented. The procedure introduces frequency decomposition (splitting the wind-speed data into high frequency (HF) and low-frequency (LF) components), shifting, and limiting in addition to differencing and power transformation which are used in the standard ARIMA modeling procedure. The modified modeling procedure is applied to model 10 minute average measured wind-speed data from three locations in the Baltic Sea area and the results show that the procedure can capture time correlation and probability distribution of the data. In addition, it is shown that, for 10-min average wind-speed data in the Baltic Sea area, it could be sufficient to use ARIMA(6,0,0) and ARIMA(0,1,6) to model the HF and LF components of the data, respectively. It is also shown that, in the Baltic Sea area, a model developed for an observed wind-speed data at one location could be used to simulate wind-speed data at a nearby location where only the average wind-speed is known.
引用
收藏
页码:2546 / 2556
页数:11
相关论文
共 50 条
  • [21] Modeling for chaotic time series based on linear and nonlinear framework: Application to wind speed forecasting
    Jiang, Ping
    Wang, Biao
    Li, Hongmin
    Lu, Haiyan
    ENERGY, 2019, 173 : 468 - 482
  • [22] Modeling wind speed time series by Chebyshev polynomial expansion method
    Xiao, Qing
    ENERGY SOURCES PART A-RECOVERY UTILIZATION AND ENVIRONMENTAL EFFECTS, 2021,
  • [23] Study on Modeling of Short-term Wind speed Forecasting based on Time Series Analysis
    Zhang, Yu
    PROCEEDINGS OF THE 2015 INTERNATIONAL CONFERENCE ON SOCIAL SCIENCE AND TECHNOLOGY EDUCATION (ICSSTE 2015), 2015, 18 : 426 - 429
  • [24] Traffic speed prediction of high-frequency time series using additively decomposed components as features
    Ali, Muhammad
    Yusof, Kamaludin Mohamad
    Wilson, Benjamin
    Ziegelmueller, Carina
    IET SMART CITIES, 2022, 4 (02) : 92 - 109
  • [25] Time Series Prediction of Wind Speed Based on SARIMA and LSTM
    Xiong, Caiquan
    Yu, Congcong
    Gu, Xiaohui
    Xu, Shiqiang
    COMPLEX, INTELLIGENT AND SOFTWARE INTENSIVE SYSTEMS, CISIS-2021, 2021, 278 : 57 - 67
  • [26] Short-Term Wind Power Generation Forecasting: Direct Versus Indirect Arima-Based Approaches
    Shi, Jing
    Qu, Xiuli
    Zeng, Songtao
    INTERNATIONAL JOURNAL OF GREEN ENERGY, 2011, 8 (01) : 100 - 112
  • [27] Coronavirus (COVID-19): ARIMA-based Time-series Analysis to Forecast near Future and the Effect of School Reopening in India
    Tandon, Hiteshi
    Ranjan, Prabhat
    Chakraborty, Tanmoy
    Suhag, Vandana
    JOURNAL OF HEALTH MANAGEMENT, 2022, 24 (03) : 373 - 388
  • [28] Prediction Model Selection with Frequency Check on Decomposed Time Series
    Buyuksahin, Umit Cavus
    Ertekin, Seyda
    2019 27TH SIGNAL PROCESSING AND COMMUNICATIONS APPLICATIONS CONFERENCE (SIU), 2019,
  • [29] Time Series Model of Wind Speed for Multi Wind Turbines based on Mixed Copula
    Nie, Dan
    Cao, Le
    Yan, Wei
    2016 3RD INTERNATIONAL CONFERENCE ON MECHANICS AND MECHATRONICS RESEARCH (ICMMR 2016), 2016, 77
  • [30] ARIMA Based Time Series Forecasting Model
    Xue, Dong-mei
    Hua, Zhi-qiang
    RECENT ADVANCES IN ELECTRICAL & ELECTRONIC ENGINEERING, 2016, 9 (02) : 93 - 98