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2007 Motorola Indy 300


The 2007 Motorola Indy 300 was a race in the 2007 IRL IndyCar Series, held at Infineon Raceway. It was held over the weekend of 24 -August 26, 2007, as the fifteenth round of the seventeen-race calendar.

Classification

Fin.
PosCar
No.DriverTeamLapsTime/RetiredGridLaps
LedPoints123456789101112131415161718Lead changes: 10 between 4 drivers
9NZL Scott DixonChip Ganassi Racing801:51:58.553351550
3BRA Hélio CastronevesTeam Penske80+0.54494040
27GBR Dario FranchittiAndretti Green Racing80+8.381416235+3
11BRA Tony KanaanAndretti Green Racing80+8.98643132
6USA Sam Hornish Jr.Team Penske80+9.94736030
7USA Danica PatrickAndretti Green Racing80+10.37252028
10GBR Dan WheldonChip Ganassi Racing80+10.809810026
2RSA Tomas ScheckterVision Racing80+12.685511024
4BRA Vítor MeiraPanther Racing80+12.978213022
55JPN Kosuke MatsuuraPanther Racing80+14.970812020
15USA Buddy RiceDreyer & Reinbold Racing79+1 Lap9019
14GBR Darren ManningA.J. Foyt Racing79+1 Lap16018
20USA Ed CarpenterVision Racing79+1 Lap14017
8USA Scott SharpRahal Letterman Racing79+1 Lap17016
22USA A. J. Foyt IVVision Racing71Accident15015
26USA Marco AndrettiAndretti Green Racing68Accident8214
5USA Sarah FisherDreyer & Reinbold Racing28Mechanical18013
17USA Ryan Hunter-ReayRahal Letterman Racing5Handling7012

References

Info: Wikipedia Source

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