Top English Premier League Teams, Expected Goal Difference (2023/2024)
Per 90 minutes
Manchester City FC0.8
0% D
-5.9% W
-18.4% M
– Y
Latest from Realtime (Beta)
Manchester City’s expected goal difference declines nearly 20%
The team’s xGD per 90 minutes drops to 0.98, signaling performance challenges over the past month.
Manchester City FC’s expected goal difference per 90 minutes (0.98) has decreased by 19.67% over the past month, reflecting a downturn in their performance metrics.
Manchester City FC | 0.8 |
Liverpool FC | 0.7 |
Arsenal FC | 0.51 |
Chelsea FC | 0.4 |
Tottenham Hotspur FC | 0.35 |
AFC Bournemouth | 0.27 |
Brighton & Hove Albion FC | 0.23 |
Fulham FC | 0.16 |
Manchester United FC | 0.13 |
Newcastle United FC | 0.07 |
Aston Villa FC | 0 |
Crystal Palace FC | 0 |
Nottingham Forest FC | -0.09 |
Everton FC | -0.27 |
West Ham United FC | -0.3 |
Wolverhampton Wanderers FC | -0.35 |
Brentford FC | -0.48 |
Burnley FC | -0.57 |
Ipswich Town FC | -0.58 |
Leicester City FC | -0.77 |
Luton Town FC | -0.79 |
Southampton FC | -0.81 |
Sheffield United FC | -1.08 |
Click name to see details
Latest news articles
ESPN, Apr 2, 2024
1.91 Manchester City FC | 0% D | - 1.5% W | - 5.9% M | – Y | |
1.09 Arsenal FC | 0% D | + 0.9% W | - 12.1% M | – Y | |
0.64 Liverpool FC | 0% D | - 4.5% W | + 73% M | – Y | |
60% Brighton | – D | – W | – M | – Y | |
122.2 Boston Celtics | 0% D | 0% W | 0% M | – Y | |
108.4 Minnesota Timberwolves | 0% D | 0% W | 0% M | – Y | |
11.7 Boston Celtics | 0% D | 0% W | 0% M | – Y | |
2.26 Manchester City FC | 0% D | 0% W | - 7.4% M | – Y | |
0.82 FC Bayern München | 0% D | 0% W | + 10.8% M | – Y | |
1.44 FC Bayern München | 0% D | 0% W | - 5.9% M | – Y | |
1.86 FC Barcelona | 0% D | 0% W | - 5.1% M | – Y | |
1.8 FC Barcelona | 0% D | 0% W | + 4% M | – Y | |
0.98 Getafe Club de Fútbol | 0% D | 0% W | + 3.2% M | – Y | |
0.74 FC Barcelona | 0% D | 0% W | + 21.3% M | – Y | |
0.88 FC Barcelona | 0% D | 0% W | - 27.3% M | – Y | |
71.4% Cavaliers | 0 D | - 1.3 W | - 3.6 M | – Y | |
2179.1 Aryna Sabalenka | – D | + 0.7% W | + 0.7% M | + 3.6% Y | |
2309.3 Jannik Sinner | – D | 0% W | 0% M | + 5.1% Y | |
2831 Magnus Carlsen | 0% D | 0% W | 0% M | – Y | |
2838 Magnus Carlsen | 0% D | 0% W | + 0.5% M | – Y | |
2890 Magnus Carlsen | 0% D | 0% W | - 0.1% M | – Y | |
13.2 Nikola Jokić | 0% D | 0% W | 0% M | – Y | |
10.6 Nikola Jokić | 0% D | 0% W | 0% M | – Y | |
94.74% BOS Celtics | 0 D | + 5.8 W | + 37.3 M | – Y | |
99.8% Real Madrid | + 25.3 D | + 25.3 W | + 56.8 M | – Y |
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