Analysis of Soccer Players’ Positional Variability During the 2012 UEFA European Championship: A Case Study

Open access


The purpose of this study was to analyse players’ positional variability during the 2012 UEFA European Championship by applying principal component analysis (PCA) to data gathered from heat maps posted on the UEFA website. We analysed the teams that reached the finals and semi-finals of the competition. The players’ 2D coordinates from each match were obtained by applying an image-processing algorithm to the heat maps. With all the players’ 2D coordinates for each match, we applied PCA to identify the directions of greatest variability. Then, two orthogonal segments were centred on each player’s mean position for all matches. The segments’ directions were driven by the eigenvectors of the PCA, and the length of each segment was defined as one standard deviation around the mean. Finally, an ellipse was circumscribed around both segments. To represent player variability, segment lengths and elliptical areas were analysed. The results demonstrate that Portugal exhibited the lowest variability, followed by Germany, Spain and Italy. Additionally, a graphical representation of every player’s ellipse provided insight into the teams’ organisational features throughout the competition. The presented study provides important information regarding soccer teams’ tactical strategy in high-level championships that allows coaches to better control team organisation on the pitch.

Barros RML, Cunha SA, Magalhães Jr. WJ, Guimarães MF. Representation and analysis of soccer players’ actions using principal components. J Hum Movement Stud, 2006; 51: 103-116

Barros RML, Misuta MS, Menezes RP, Figueroa PJ, Moura FA, Cunha SA, Anido R, Leite NJ. Analysis of the distances covered by first division Brazilian soccer players obtained with an automatic tracking method. J Sports Sci Med, 2007; 6: 233-242

Bate R. Football chance: tactics and strategy. Science and Football. E & FN SPON, 293-301; 1988

Bourbousson J, Seve C, McGarry T. Space-time coordination dynamics in basketball: Part 1. Intra- and inter-couplings among player dyads. J Sports Sci, 2010; 28(3): 339-347

Bradley PS, Sheldon W, Wooster B, Olsen P, Boanas P, Krustrup P. High-intensity running in English FA Premier League soccer matches. J Sports Sci, 2009; 27(2): 159-168

Couceiro MS, Clemente FM, Martins FML, Machado JAT. Dynamical stability and predictability of football players: the study of one match. Entropy, 2014; 16: 645-674

Daffertshofer A, Lamoth CJC, Meijer OG, Beek PJ. PCA in studying coordination and variability: a tutorial. Clinical Biomechanics, 2004; 19(4): 415-428

Davids K, Araújo D, Shuttleworth R, iR, T. CJ, Araújo D., eds., Science & Football V, Routledge, Oxon, 2005, 556-569. Applications of dynamical system theory to football. Science & Football V. Routledge, 556-569; 2005

Di Salvo V, Baron R, Tschan H, Calderon Montero FJ, Bachl N, Pigozzi F. Performance characteristics according to playing position in elite soccer. Int J Sports Med, 2007; 28(3): 222-227

Di Salvo V, Gregson W, Atkinson G, Tordoff P, Drust B. Analysis of high intensity activity in Premier League soccer. Int J Sports Med, 2009; 30(3): 205-212

Gréhaigne JF, Bouthier D, David B. Dynamic-system analysis of opponent relationships in collective actions in soccer. J Sports Sci, 1997; 15(2): 137-149

Haken H, Kelso JAS, Bunz H. A Theoretical-Model of Phase-Transitions in Human Hand Movements. Biological Cybernetics, 1985; 51(5): 347-356

Hamill J, Haddad JM, McDermott WJ. Issues in quantifying variability from a dynamical systems perspective. Journal of Applied Biomechanics, 2000; 16(4): 407-418

Hamill J, van Emmerik REA, Heiderscheit BC, Li L. A dynamical systems approach to lower extremity running injuries. Clinical Biomechanics, 1999; 14(5): 297-308

Hughes M, Franks I. Analysis of passing sequences, shots and goals in soccer. J Sports Sci, 2005; 23(5): 509-514

Jolliffe IT. Principal component analysis. 2nd ed. New York: Springer; 2002

McGarry T, Anderson DI, Wallace SA, Hughes MD, Franks IM. Sport competition as a dynamical self-organizing system. J Sports Sci, 2002; 20(10): 771-781

McGill R, Tukey JW, Larsen WA. Variations of box plots. Am Stat, 1978; 32: 12-16

Miller RH, Chang R, Baird JL, Van Emmerik REA, Hamill J. Variability in kinematic coupling assessed by vector coding and continuous relative phase. Journal of biomechanics, 2010; 43(13): 2554-2560

Moura FA, Martins LE, Anido RO, Ruffino PR, Barros RM, Cunha SA. A spectral analysis of team dynamics and tactics in Brazilian football. J Sports Sci, 2013; 31(14): 1568-1577

Moura FA, Martins LEB, Anido RO, Barros RML, Cunha SA. Quantitative analysis of Brazilian football players' organisation on the pitch. Sports Biomech, 2012; 11(1): 85-96

Moura FA, Santana JE, Marche AL, Aguiar TH, Rodrigues ACMA, Barros RML, Cunha SA. Quantitative analysis of futsal players' organization on the court. Rev Port Cien Desp, 2011; 11(2): 105-108

Okihara K, Kan A, Shiokawa M, Choi CS, Deguchi T, Matsumoto M, Higashikawa Y. Compactness as a strategy in a soccer match in relation to a change in offence and defense. J Sports Sci, 2004; 22(6): 515

Silva P, Aguiar P, Duarte R, Davids K, Araújo D, Garganta J. Effects of pitch size and skill level on tactical behaviours of Association Football players during small-sided and conditioned games. International Journal of Sports Science and Coaching, 2014; 9(5): 993-1006

van Emmerik REA, van Wegen EEH. Symposium on variability and stability in human movement. Journal of Applied Biomechanics, 2000; 16(4): 394-406

Wilson C, Simpson SE, Van Emmerik REA, Hamill J. Coordination variability and skill development in expert triple jumpers. Sports Biomech, 2008; 7(1): 2-9

Yamanaka K, Hughes M, Lott M. An analysis of playing patterns in the 1990 World Cup for Association Football. Science and Football II E & FN SPON, 206-214; 1993

Yue Z, Broich H, Seifriz F, Mester J. Mathematical Analysis of a Soccer Game. Part I: Individual and Collective Behaviors. Stud Appl Math, 2008; 121(3): 223-243

Journal of Human Kinetics

The Journal of Academy of Physical Education in Katowice

Journal Information

IMPACT FACTOR 2017: 1.174
5-year IMPACT FACTOR: 1.634

CiteScore 2017: 1.31

SCImago Journal Rank (SJR) 2017: 0.516
Source Normalized Impact per Paper (SNIP) 2017: 0.906

Cited By


All Time Past Year Past 30 Days
Abstract Views 0 0 0
Full Text Views 159 137 11
PDF Downloads 88 83 8