Tulsa at SMU Week 9 College Football Matchup Tulsa at SMU Matchup - Week 9
Sat, Oct 28 2023 · Week 9 · 🏟 Gerald J. Ford Stadium University Park, TX · Turf · 32,000 cap
Tulsa✈ 233 miSame TZ
Away
10 69
Final
SMU
Home
📊 Punt & Rally Projection
Tulsa
16
SMU
40
P&R Line SMU -24.5
P&R Total O/U 56
Confidence 90 High
Vegas SMU -20.5 · O/U 55.0
Matchup Prediction
SMU has the edge in this matchup
Both Momentum Control (CSS) and Game Control metrics favor SMU entering this game.
Momentum Control
58.4%
SMU wins
Lean
Game Control
76%
SMU wins
Strong
Vegas Spread
SMU -20.5
O/U 55.0
William Hill (New Jersey)
Advanced Stats
All 4 factors agree → SMU · 83.1% ATS historically when all four align
↓ See full breakdown
Tulsa 2023 Schedule
Tulsa's 2023 Schedule
DateMatchupSpreadTotalResultO/UCover
Thu 8/31Tulsa vs Arkansas-Pine Bluff-41.0W42–752.5W42–7UN
Sat 9/9Tulsa at Washington+34.0L10–4366.5L10–43UY
Sat 9/16Tulsa vs Oklahoma+28.0L17–6658.5L17–66ON
Sat 9/23Tulsa at Northern Illinois+3.5W22–1454.5W22–14UY
Thu 9/28Tulsa vs Temple-3.0W48–2656.0W48–26OY
Sat 10/7Tulsa at Florida Atlantic+3.0L17–2054.5L17–20UY
— Bye Week —
Thu 10/19Tulsa vs Rice-3.0L10–4256.5L10–42UN
Sat 10/28Tulsa at SMU+20.5L10–6955.0L10–69ON
Sat 11/4Tulsa vs Charlotte-4.5L26–3347.5L26–33ON
Sat 11/11Tulsa at Tulane+24.5L22–2452.5L22–24UY
Sat 11/18Tulsa vs North Texas+1.5L28–3569.5L28–35UN
Sat 11/25Tulsa at East Carolina+4.5W29–2744.5W29–27OY
SMU 2023 Schedule
SMU's 2023 Schedule
DateMatchupSpreadTotalResultO/UCover
Sat 9/2SMU vs Louisiana Tech-21.0W38–1466.0W38–14UY
Sat 9/9SMU at Oklahoma+16.5L11–2868.5L11–28UN
Sat 9/16SMU vs Prairie View A&M-42.5W69–063.5W69–0OY
Sat 9/23SMU at TCU+7.0L17–3463.5L17–34UN
Sat 9/30SMU vs Charlotte-22.5W34–1653.0W34–16UN
— Bye Week —
Thu 10/12SMU at East Carolina-11.5W31–1048.5W31–10UY
Fri 10/20SMU at Temple-24.0W55–053.0W55–0OY
Sat 10/28SMU vs Tulsa-20.5W69–1055.0W69–10OY
Sat 11/4SMU at Rice-12.0W36–3159.5W36–31ON
Fri 11/10SMU vs North Texas-21.5W45–2167.5W45–21UY
Sat 11/18SMU at Memphis-9.5W38–3464.5W38–34ON
Sat 11/25SMU vs Navy-20.0W59–1446.0W59–14OY
Sat 12/2SMU at Tulane+4.0W26–1450.5W26–14UY
Thu 12/28SMU vs Boston College-13.5L14–2349.0L14–23UN
Advanced Stats
Advanced Analytics Matchup
Matchup-adjusted (offense vs opponent defense) · 2023 season
SMU PPA Edge
Agreement Signals — When All Metrics Agree
Elite · 83.1% ATS
PPA + PPO + SR + Havoc
All 4 Agree
→ SMU
Elite · 82.4% ATS
PPA + PPO + Havoc
3 Agree
→ SMU
Elite · 73.9% ATS
PPA + Success Rate
Both Agree
→ SMU
Individual Factors — Ranked by Predictive Strength
PPA Overall
Points added per play · Elite predictor
Tulsa #77
+0.219
SMU #24
+0.570
SMU Edge
PPA Passing
Pass efficiency edge · Strong predictor
Tulsa #37
+0.454
SMU #16
+0.882
SMU Edge
Havoc Total
Def. disruption rate · Strong predictor
Tulsa #108
0.145
SMU #14
0.194
TFLs, sacks, PBUs, forced fumbles — higher is better
SMU Edge
Points Per Opp
Drive-finishing edge · Strong predictor
Tulsa #34
+7.825
SMU #21
+8.457
SMU Edge
Success Rate
Play consistency edge · Solid predictor
Tulsa #83
+0.767
SMU #46
+0.878
SMU Edge
Field Position
Avg start (lower=better) · Solid predictor
Tulsa #105
71.9
SMU #40
69.6
Avg yards from own endzone to average start — lower is better · longer bar = better field position
SMU Edge
Advanced stats sourced from CFBD · 2023 season · Edges are matchup-adjusted (offense vs opponent defense)
Power Ratings
Team Power Ratings
Overall · Offense · Defense ratings · Updated as season progresses
SMU Rated Higher
Overall Power Rating
Tulsa
0.7
SMU
16.2
Offense Rating
Tulsa
16.9
SMU
26.0
Defense Rating (lower = better defense)
Tulsa
16.1
SMU
9.9
Power ratings updated throughout the season as results accumulate
Momentum Control (CSS)
Consecutive Scoring Sequences Who builds scoring momentum? SMU Edge
Avg sequences created per game
Tulsa #92
0.83
SMU #35
1.50
Avg sequences allowed per game (lower is better)
Tulsa #117
1.33
SMU #31
0.83
SMU +0.67
CSS Edge (season-to-date)
Teams with this edge win 58.4% of games historically
Based on 6 games this season
Game Control (GC)
Win Probability Dominance Who controls games start to finish? SMU Edge
Avg GC score per game (offense)
Tulsa #1
31.1
SMU #1
64.7
Avg GC score allowed per game (lower is better)
Tulsa #122
58.1
SMU #9
25.0
SMU +33.6
GC Edge (season-to-date)
Teams with this edge win 76% of games historically
Based on 7 games this season
Actual Result
CSS Battle
SMU
5 — 0 sequences
✓ Predicted correctly
GC Battle
SMU
96.5 — 2.5 GC score
✓ Predicted correctly
Game Result
SMU won by 59
✓ Model called it
Spread Context
ATS Historical Context
Based on 2021–2025 backtest · FBS vs FBS · Regular season

Both metrics agree on SMU with a large edge. Historically, dominant teams like this are fully priced into the spread — the agreed-upon team covers just 50.2% of the time. The metrics predict game control better than they beat the number.

ATS data is informational only. Past cover rates do not guarantee future results.

Coaching Matchup
Tulsa
Kevin Wilson #1
1–2 (33%) · Yr 1 at school
OC Steve Spurrier Jr. Yr 1 #1
DC Chris Polizzi Yr 1 #1
Staff Rating
0.00 #1
SMU
Rhett Lashlee #1
9–7 (56%) · Yr 2 at school
OC Casey Woods Yr 2 #1
DC Scott Symons Yr 2 #1
Staff Rating
0.00 #1
About these metrics
Advanced Stats shows matchup-adjusted factor edges (offense vs opponent defense). Combination signals — when PPA, PPO, Success Rate, and Havoc all point the same direction — have historically predicted the SU winner in 95–97% of games and the ATS winner in 82–83% of games (2021–2025, FBS vs FBS, regular season).
Impact: Advanced Stats are the best performance based metric used to predict the outcome of games.

Momentum Control (CSS) measures consecutive scoring sequences — when a team scores, holds the opponent scoreless, then scores again. Teams entering a game with a CSS edge of +1.0 or more have won 71–78% of games historically (2021–2025, FBS vs FBS).
Impact: Momentum Control is a great measure for predicting game outcome but NOT an ATS advantage, data shows this is already considered when lines are set.

Game Control (GC) measures win probability dominance — how thoroughly a team controlled the game from start to finish. Teams with a GC edge of +12 or more have won 67–76% of games historically. When both metrics agree, combined confidence is higher. When they split, treat as a lean at best.
Impact: Game Control is another great measure for predicting game outcome but NOT an ATS advantage, data shows this is already considered when lines are set.

Power Ratings are a custom-built composite of a Teams Talent, Experience & Production, Coaching & Performance Metrics. These are updated constantly with roster changes, performance once the games start for the 2026 season, injuries the team is dealing with and scheduling situations.
Impact: There are a wide range of power ratings available, we think ours is the best, you can decide for yourself