2019 Ford Transit T-350 |

1FBZX2YG4KKA76560

image
image
image
image
image
image
image
image
image
image
image
image
image
image
gallery-icon 14
Car Info
  • 159342
    Mileage
  • 3.5l 6
    Engine
  • gas
    Fuel Type
  • Run And Drives
    Condition
Auctions History

No auctions data

Overviews
  • Make Ford
  • Model Transit
  • Serie II
  • Year 2019
  • Mileage 159342 miles
  • Auction copart.com
  • VIN
    1FBZX2YG4KKA76560
  • LOT Number 87023314
  • Location OR - Portland North
  • Vehicle condition Run And Drives
  • Color black
  • Primary damage Normal Wear
  • Seller BANDAGO
  • Date of sale 11.02.2025
  • Gearbox automatic
  • Drive rear
  • Keys Yes
  • Fuel gas

Vehicle Auction by VIN: 1FBZX2YG4KKA76560

2019 Ford Transit 3.5l 6 black at copart.com Auction

Vehicle Auction 2019 Ford Transit II 3.5l 6 black. The car has been listed at copart.com auction with lot number: 87023314. The auction date is 11.02.2025, and it will take place in OR - Portland North.


Auction Details 87023314, Sale at OR - Portland North:

Sale History by VIN: 1FBZX2YG4KKA76560

  • Vehicle Condition: Run And Drives

  • Vehicle Damage: Normal Wear

  • Vehicle Mileage: 159342 miles

  • Seller: BANDAGO


What to Know About This Vehicle?

Retail Value: $7200

Key Vehicle Details:

  • Fuel Type: gas
  • Drivetrain: rear
  • Transmission: automatic

Key Availability: Yes

Vehicle Status: Run And Drives


Photos and Specifications

Find complete photos and details in the auction gallery, where you can check the vehicle's exterior and interior condition and verify damages.


Before You Place a Bid

Download the VIN report for 1FBZX2YG4KKA76560 to thoroughly check the vehicle's history, including:

  • Accident records.

  • Registration and ownership details.

  • Odometer readings and mileage.


How to Win This Vehicle at Auction?

If you want to buy this vehicle at the best price, contact us! Our team will assist you in the bidding process and ensure you get the best deal.

Contact us today to get started!


Ford - Popular models