2015 Ford Mustang 2.3L for Sale in Gardena CA

2015 FORD  - Image 1.
2015 FORD  - Image 2.
2015 FORD  - Image 3.
2015 FORD  - Image 4.
2015 FORD  - Image 5.
2015 FORD  - Image 6.
2015 FORD  - Image 7.
2015 FORD  - Image 8.
2015 FORD  - Image 9.
2015 FORD  - Image 10.

Future Sale

Sale Information

Sale Location
Vehicle Location
18300 South Vermont Avenue, Gardena, Ca 90248
Sale Date
Thu Dec 31, 07:00pm (EST)
Last Updated
12/10/2023 17:19

Domestic Shipping

Get In touch by contacting us via
E-mail or Live Chat for an exact quote

Vehicle Information

VIN
Item #
1 Inoperable Digital Dash
Loss
Collision
Primary Damage
ALL Over
Secondary Damage
Rollover
Salvage Certificate California
Stationary
Key
Missing
Airbags
Intact
Actual Cash Value
$24,997

Vehicle History

Sales Records
Odometer Reading
Previous Sales
Ownership History
Safety Recalls
Accidents
Get Vehicle History Report

Vehicle Description

Vehicle Type
Automobile
Year
2015
Make
FORD
Model
MUSTANG
Series
Ecoboost
Body Style
Coupe
Exterior Color
RED
Interior Color
Black
Engine
2.3L
Transmission
Automatic
Fuel Type
Gasoline
Cylinders
4
Restraint System
Driver Air Bag; Passenger Air Bag; Front Side Air Bag

WARNING: Operating, servicing and maintaining a passenger vehicle or off-highway motor vehicle can expose you to chemicals including engine exhaust, carbon monoxide, phthalates, and lead, which are known to the State of California to cause cancer and birth defects or other reproductive harm. To minimize exposure, avoid breathing exhaust, do not idle the engine except as necessary, service your vehicle in a well-ventilated area and wear gloves or wash your hands frequently when servicing your vehicle. For more information go to www.P65Warnings.ca.gov/passenger-vehicle.

Vehicle Sale Information

Sale Location
Vehicle Location
18300 South Vermont Avenue, Gardena, Ca 90248
Sale Date
Thu Dec 31, 07:00pm (EST)
Last Updated
12/10/2023 17:19
Domestic Shipping

Get In touch by contacting us via
E-mail or Live Chat for an exact quote

We use cookies to analyse & personalise content