사례 연구

무결점 용접: 열폭주 방지를 위한 배터리 전극 탭 검사 자동화

사례 연구 다운로드

내용

또한 공유하세요

Introduction: The High Stakes of the Final Weld

In Lithium-ion battery manufacturing, the ultrasonic welding of electrode tabs is a pivotal moment. This process creates the electrical path for the cell. If the joint is weak, resistance rises. If resistance rises, heat generates. In the worst-case scenario, a poor weld becomes the catalyst for 열 폭주, leading to cell failure or explosion.

Despite these high stakes, many manufacturers still rely on manual sampling for quality control. The problem? Manual inspection is slow, inconsistent, and lacks data traceability. In a mass-production environment, checking “some” of the batteries isn’t enough—you need to check 공통 of them in real-time.

The Challenge: Tiny Defects, Massive Consequences

Ultrasonic welding defects are often subtle, multi-factor in nature, and difficult to detect through conventional inspection methods. A “bad weld” isn’t just about strength; it involves a variety of visual indicators that are hard to standardize for human inspectors:

  • 구조적 문제: Tab tearing, folding, or burrs (sharp edges that can puncture separators).
  • Process Issues: Weld-mark misalignment, insufficient fusion, or burn marks.

The project goal was clear: Replace labor-intensive sampling with an AI-driven system capable of 100% 인라인 검사 to ensure no defective unit ever moves forward.

The Solution: A Value-Added Retrofit

UnitX approached this challenge not by demanding a new production line, but by upgrading the existing one. We designed a value-added retrofit for the ultrasonic welding machine.

A Value Added Retrofit1

 

This compact integration fits seamlessly into the welding station. It captures high-resolution images immediately after the weld is formed.

  • 두뇌: 에 의해 구동 UnitX 피질 (AI Central & Inspection Cell) for rapid processing.
  • 눈: A UnitX OptiX imaging system, specifically angled (as shown in the schematic) to highlight texture differences between a good weld pattern and defects like metal burrs or folds.AI 기반 결함 탐지 실전 사례

AI 기반 결함 탐지 실전 사례

CorteX was trained to detect specific morphological changes in the metal tabs. Unlike traditional rule-based vision that might get confused by the natural texture of a weld, the UnitX AI distinguishes between the normal “roughness” of a weld and actual damage.

Reliability at Scale

The deployment of this system delivered immediate improvements in both quality assurance and operational stability.

  • Guaranteed Safety (FA = 0%)

For a critical process like welding, “mostly good” isn’t good enough,UnitX 달성:

  • False Acceptance Rate: 0%.
  • Every single unit with a critical defect (like a tear or burr) was correctly identified and rejected.
  1. 운영 안정성

A unique highlight of this deployment was the system’s robustness.

  • 중단 시간: ≤ 0.1 %.
  • The system operates with extreme reliability, ensuring that the inspection process does not become a cause for line stoppages.
  1. 효율성과 속도
  • 사이클 타임 : 4.3 초 미만.

False Rejection Rate: ≤ 1 %.

  • The system keeps up with the welding cycle while minimizing the waste of good materials, saving significant labor costs previously dedicated to manual checking.

맺음말

The transition from manual sampling to 100% AI automated inspection is the only way to guarantee the safety of modern Lithium-ion batteries. By retrofitting existing ultrasonic welders with UnitX’s visual inspection system, manufacturers can close the gap on quality control, ensuring that every weld is strong, clean, and safe.

Upgrade your welding process today.

CONTACT UnitX to learn about our retrofit solutions for battery manufacturing.

관련 사례 연구

이미지 29
무제 디자인 (2)
Cylinderical tap-2
Hairpin stators feature complex copper winding geometry that is difficult to inspect manually
Internal Threads and Outer Walls
블로그 기능 이미지
이미지 32
이미지 27
14 Surfaces, Mixed Production
Upgrade Intelligence, Not Just Infrastructure
위쪽으로 스크롤