Knuckleball simulations show a deviation of just
0.59 N but the side force changes direction
throughout the time of flight. This causes the
knuckling effect, causing the ball to oscillate
unpredictably. In this scenario, animations show that
counter rotating vortex pairs behind the ball are
unstable. This coupled with vortex breakdown
causes the unstable knuckling behaviour.
Figure 4: Line Integral Convolution (LIC) and vorticity in
knuckleball scenario at 0.63 s.
4 DISCUSSION
Spanish goalkeeper, David De Gea is 6 ft 3 in (1.9
m) tall with an overall reach of 2.2 m when diving.
Before the kick,
he is around 2.75 m from the left
post (Figure 5) and the ball hits the net around 5.9 m
from the left post. The gap of 3.15 m is too far
considering his diving range, hence he doesn’t even
attempt to stop the kick. Simulations show that the
Jabulani would deviate a further 0.7 m towards De
Gea compared to the Telstar, leaving a gap of only
2.45 m between De Gea and the ball. Goalkeepers
rely on instinct and with the ball just 0.25 m outside
his range and accounting for trigger motion, De Gea
could have stopped the Jabulani kick.
The seam depth of the Jabulani is 0.5 mm while
that of Telstar 18 is 1.1 m. The balls have different
panel shapes and numbers as well. Flow
visualizations with skin friction coefficient suggest
that flow separation occurs at different points for
both balls, precisely due to the depth and geometry
of the seams. This leads to differences in wake size
and vorticity behaviour, contributing to different
aerodynamics of the balls.
Even though Ronaldo’s signature kick is the
knuckleball, simulations show that lift force changes
direction during flight and the side force is small.
The small distance to the goal means that getting the
elevation and dip to go over the defenders wall with
precision is risky considering there was no curve to
the ball. The longer the ball is in flight, the more
fluctuations occur in the wake causing more
knuckling and making the kick harder to stop.
Assumptions in the study due to lack of
information included initial seam orientation,
surface roughness and spin rate. The arc of the ball
from the ground to its position above the defenders
wall and the dip is not accounted for.
Figure 5: Initial position of David De Gea (FOX Soccer,
2018).
5 CONCLUSION
The simulations show detailed deviation differences
between the Telstar 18 and Jabulani due to seam
depth and panel shapes, meaning that ball trajectory
is reliant on ball design. Predictable ball behaviour,
a smoother curve during free kicks and deviation
distance all factor into game results and success of a
ball design. DES analysis of spinning soccer balls
will provide additional information on ball
behaviour to ball designers, players and teams,
influencing ball design, style of play and game
outcome.
An important subject for future analysis is
repeating the simulations with more game and ball
information. Dynamic Fluid-Body Interaction
(DFBI) technique in conjunction with RBM and
overset meshing will allow for modelling the exact
position and path of the ball at each time step by
moving the ball based on instantaneous deviation.
ACKNOWLEDGEMENTS
Telstar 18 and Jabulani are registered trademarks of
Adidas AG. FIFA, World Cup and 2018 World Cup
are trademarks of FIFA. Siemens PLM Software and
its subsidiaries and products are not affiliated with,
endorsed by, sponsored by, or supported by Adidas
AG or FIFA.