Clustering of Wind Speed Time Series as a Tool for Wind Farm Diagnosis

被引:1
|
作者
Martins, Ana Alexandra [1 ,2 ]
Vaz, Daniel C. [3 ,4 ]
Silva, Tiago A. N. [1 ,3 ,4 ]
Cardoso, Margarida [5 ]
Carvalho, Alda [1 ,6 ,7 ]
机构
[1] ISEL IPL, Ctr Invest Modelacao & Otimizacao Sistemas Multifu, P-1959007 Lisbon, Portugal
[2] ISEL IPL, Ctr Invest Matemat & Aplicacoes, P-7000671 Evora, Portugal
[3] Univ NOVA Lisboa, NOVA Sch Sci & Technol, Dept Mech & Ind Engn, UNIDEMI, P-1099085 Lisbon, Portugal
[4] Lab Associado Sistemas Inteligentes, P-4800058 Guimaraes, Portugal
[5] Univ Inst Lisbon, Business Res Unit, ISCTE IUL, P-1649026 Lisbon, Portugal
[6] Univ Aberta, Dept Ciencias & Tecnol, P-1250100 Lisbon, Portugal
[7] Univ Lisbon, CEMAPRE ISEG Res, P-1269001 Lisbon, Portugal
关键词
time series; wind data; clustering; K-medoids; COMB distance; visual interpretation tools; wind farm diagnosis;
D O I
10.3390/mca29030035
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
In several industrial fields, environmental and operational data are acquired with numerous purposes, potentially generating a huge quantity of data containing valuable information for management actions. This work proposes a methodology for clustering time series based on the K-medoids algorithm using a convex combination of different time series correlation metrics, the COMB distance. The multidimensional scaling procedure is used to enhance the visualization of the clustering results, and a matrix plot display is proposed as an efficient visualization tool to interpret the COMB distance components. This is a general-purpose methodology that is intended to ease time series interpretation; however, due to the relevance of the field, this study explores the clustering of time series judiciously collected from data of a wind farm located on a complex terrain. Using the COMB distance for wind speed time bands, clustering exposes operational similarities and dissimilarities among neighboring turbines which are influenced by the turbines' relative positions and terrain features and regarding the direction of oncoming wind. In a significant number of cases, clustering does not coincide with the natural geographic grouping of the turbines. A novel representation of the contributing distances-the COMB distance matrix plot-provides a quick way to compare pairs of time bands (turbines) regarding various features.
引用
收藏
页数:16
相关论文
共 50 条
  • [1] Wind farm dynamic equivalence based on clustering by output time series data of wind turbine generators
    Zhang, Xing
    Li, Longyuan
    Hu, Xiaobo
    Wang, Xiaoru
    Zhou, Xiaoxin
    Dianwang Jishu/Power System Technology, 2015, 39 (10): : 2787 - 2793
  • [2] Band Depth Clustering for Nonstationary Time Series and Wind Speed Behavior
    Tupper, Laura L.
    Matteson, David S.
    Anderson, C. Lindsay
    Zephyr, Luckny
    TECHNOMETRICS, 2018, 60 (02) : 245 - 254
  • [3] A novel time series data clustering approach for wind speed forecasting
    Kamal, Mh Asif
    Gyanchandaniyan, Manasi
    Kushwah, Anil Kumar
    WIND ENGINEERING, 2022, 46 (04) : 1281 - 1290
  • [4] Trend-based time series data clustering for wind speed forecasting
    Kushwah, Varsha
    Wadhvani, Rajesh
    Kushwah, Anil Kumar
    WIND ENGINEERING, 2021, 45 (04) : 992 - 1001
  • [5] Numerical simulation of wind speed time series of the whole wind turbine
    Ming, Huang
    Gao, Kai-Qiang
    Zhang, Zhi-Qiang
    JOURNAL OF COMPUTATIONAL METHODS IN SCIENCES AND ENGINEERING, 2020, 20 (01) : 191 - 205
  • [6] Fractal dimension of wind speed time series
    Chang, Tian-Pau
    Ko, Hong-Hsi
    Liu, Feng-Jiao
    Chen, Pai-Hsun
    Chang, Ying-Pin
    Liang, Ying-Hsin
    Jang, Horng-Yuan
    Lin, Tsung-Chi
    Chen, Yi-Hwa
    APPLIED ENERGY, 2012, 93 : 742 - 749
  • [7] Prediction of Wind Speed Time Series in Brazil
    Cardoso de Figueiredo, Yann Fabricio
    Lima de Campos, Lidio Mauro
    PROCEEDINGS OF THE 13TH INTERNATIONAL CONFERENCE ON SOFT COMPUTING AND PATTERN RECOGNITION (SOCPAR 2021), 2022, 417 : 627 - 636
  • [8] A Fractal dimension of wind speed time series
    Sakamoto, Takahide
    Tanizuka, Noboru
    Hirata, Yoshito
    Aihara, Kazuyuki
    NOISE AND FLUCTUATIONS, 2007, 922 : 709 - +
  • [9] Time-series prediction of wind speed using machine learning algorithms: A case study Osorio wind farm, Brazil
    Khosravi, A.
    Machado, L.
    Nunes, R. O.
    APPLIED ENERGY, 2018, 224 : 550 - 566
  • [10] WIND SPEED FORECASTING OF WIND FARM BASED ON K-MEANS CLUSTERING AND ANALYTIC HIERARCHY PROCESS
    Meng, Yuan
    Zhang, Jian-Hua
    ENERGY AND MECHANICAL ENGINEERING, 2016, : 307 - 317