Climatic Influence on Home Advantage in Gulf Region Football
Statistical Analysis using International Match Outcomes
Franck Brocherie
1
, Olivier Girard
2
, Abdulaziz Farooq
2
and Grégoire P. Millet
1
1
Institute of Sports Sciences, Department of Physiology, Faculty of Biology and Medicine,
University of Lausanne, Lausanne, Switzerland
2
ASPETAR, Qatar Orthopaedic and Sports Medicine Hospital, Research and Education Centre, Doha, Qatar
1 OBJECTIVES
While the relevance of time-motion analysis to
determine fatigue occurrence in match-play has
recently been questioned (Carling, 2013), reductions
in match-running performance during football
competition in hot vs. cool conditions highlights the
importance of heat acclimatisation. This is of utmost
consideration for teams playing away matches at
higher temperature and/or humidity (Grantham et
al., 2010), as it can adversely affect players’
thermoregulatory control (Cheuvront et Haymes,
2001; Vihma, 2010). However, no study has yet
focused on the influence of heat stress on football
home advantage at an international level.
Therefore we investigated the impact of climatic
variables on international football results and scores
in the specific context of the World Cup 2022
perspective by applying statistical analyses aiming
to control for factors including the home advantage
and the difference in FIFA ranking between national
squads.
2 METHODS
2.1 Data Collection and Analysis
Relevant information on football match outcomes
and environmental conditions data were extracted
from two websites: (i) the official internet website of
FIFA in order to collect FIFA-recognised Olympic
and A level football results, scores and ranking for
six national teams representing Gulf Cooperation
Council (GCC), and (ii) “Weather Underground”
website centralizing climatic data from weather
stations owned by government agencies referenced
by the World Meteorological Organization (WMO).
It was used to collect both home countries’ and
opponents’ average dry bulb temperature (°C) and
relative humidity (%) of the month preceding the
matches. Temperature and humidity of the day for
all matches for the three different venues (home,
played in GCC; away, played in the opponent’
country; or neutral, played neither at home nor
away) were also granted.
Six variables were defined: (i) the probability of
a favourable outcome (i.e. win or draw vs. loss) (ii)
the difference between the number of goals scored
and the number of goals conceded (ΔGoals), (iii) the
difference in team FIFA-ranking (ΔRank), (iv) the
home advantage along with (v) the temperature (ΔT)
and (vi) the humidity (ΔH) differences between the
home venue of a specific team and that of the match
venue. Two additional variables were used to
determine the best environmental predictor for the
probability of favourable outcome and ΔGoals: (vii)
the heat index (ΔHI) and (viii) the wet bulb globe
temperature (WBGT) (ΔWBGT) difference between
the home venue of a specific team and that of the
match venue.
2.2 Statistics
Generalised linear mixed models with a logit link
function for a binomial residual distribution and a
random intercept for country were developed. The
parameter estimates were reported as odds ratios
(OR) for the favourable outcome or beta coefficient
(β) for the ΔGoals with 95% of confidence interval
(95% CI). For all procedures, a P-value <0.05 was
considered as cut-off for significance.
3 RESULTS
A total of 2008 games over 55 years between 1957
and 2012 were used.
In GCC region, home teams have greater
probability of a favourable outcome (P<0.001) and
higher ΔGoals (P<0.001) than their opponents. After
adjustment for ΔRank, home advantage and ΔH, ΔT
Brocherie F., Girard O., Farooq A. and P. Millet G..
Climatic Influence on Home Advantage in Gulf Region Football - Statistical Analysis using International Match Outcomes.
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2013 SCITEPRESS (Science and Technology Publications, Lda.)
was clearly identified as a significant explanatory
variable. With every 1°C increase in temperature,
both the probability of favourable outcome
[OR=1.02 (95% CI 1.01; 1.02, P<0.001] and ΔGoals
[β=0.02 (0.01; 0.04), P<0.001] increased. ΔH
appeared to be of lower importance than ΔT in
affecting the favourable outcome OR=1.00 (1.00;
1.01); P>0.05] and ΔGoals [β=0.01 (0.01; 0.01);
P<0.001]. Meanwhile, the probability of favourable
outcome and ΔGoals decreased OR=0.99 (0.98;
0.99) and β=-0.02 (-0.02; -0.02), respectively; both
P<0.001 when playing against a stronger opponent.
To determine the best climatic predictor on the
likelihood of a probability of favourable outcome or
on ΔGoals, the different environmental variables
collected or calculated were compared after
adjustment for ΔRank and home advantage. While
ΔT was significant (P<0.001), adding ΔH was found
to be of lower importance in affecting the match
outcomes (see above). Replacing these two variables
by ΔHI decreased the model fit and appeared non-
significant. Finally, when using ΔWBGT, both the
probability of favourable outcome OR=1.02 (95%
CI 1.01; 1.03); P<0.001 and ΔGoals β=0.03 (95%
CI 0.02; 0.05); P<0.001 increased with a similar
reading than as for ΔT. These relationships were
highlighted by plotting the different climatic
variables against ΔGoals (figure 1).
4 DISCUSSION AND
CONCLUSIONS
Our results showed that the differences in heat stress
conditions between home and away teams
significantly affect the outcome of international
football matches in the GCC region and therefore
represent an integral component of the home
advantage in these hot countries. Hot weather teams
(i.e. GCC), presumably better heat-acclimatised,
tend to have greater probability of favourable
outcome and higher ΔGoals at home with an
increase in ΔT. However, ΔRank plays an important
role in our dataset which tends to disguise the impact
of the environmental conditions.
Finally, our results suggest that temperature and
WBGT approximation, but not humidity or heat
index, are more likely to reflect the impact of
environmental conditions on match performance.
Figure 1: Relationship between temperature (ΔT),
humidity (ΔH), heat index (ΔHI), wet bulb globe
temperature (ΔWBGT) differences and the adjusted
ΔGoals.
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