Process layout
Process Overview
This solution automates turbocharger leak inspection for automotive components using the Epson VT6L.
With a compact controller-integrated robot, it can be easily installed and operated, while automating precise visual inspection to improve quality.
Components
| Robot |
|
|---|---|
| Peripherals |
|
Workflow
| STEP 1. | art input |
|---|---|
| STEP 2. | Leak location inspection |
| STEP 3. | Discharge |
Features
Improved production efficiency and excellent space utilization
Improves production efficiency through continuous operation with minimized downtime
Enhances quality through 100% precise inspection
Maximizes space utilization by applying a compact Epson robot with an integrated controller
Results
| Key Benefits | Improved quality through 100% inspection Increased leak detection rate |
|---|---|
| Client Feedback | With manual inspection, defects were sometimes missed. This solution enabled 100% inspection and increased leak detection rate, significantly improving overall quality. |

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