Root Cause Analysis (RCA)

Last updated 2026.02.13
근본원인분석RCA품질관리문제해결제조AI예측정비Root Cause AnalysisQuality Management

Definition

Root Cause Analysis (RCA) is a problem-solving methodology used in manufacturing to identify the fundamental causes of defects, equipment failures, and quality issues rather than addressing surface symptoms. By repeatedly asking "Why did this problem occur?" it traces cause-and-effect relationships to derive practical solutions for preventing recurrence.

Application in Manufacturing

Traditional RCA Methods

  • 5-Why Analysis: Reaching root cause by asking "why?" five times
  • Fishbone Diagram: Categorizing causes by factors like people, machines, materials, methods, and environment
  • FMEA: Proactive prevention through potential failure mode and effects analysis

AI-Driven RCA Evolution

Manufacturing AI is revolutionizing the RCA process:

  • Real-time Data Analysis: Discovering hidden correlations by integrating sensor data, process parameters, and quality data
  • Predictive RCA: Machine learning models learning past failure patterns to predict root causes before problems occur
  • Automated Cause Tracking: Automatically identifying top factors with greatest impact on quality variation among thousands of variables

Key Points

Real Application Example: When yield degradation occurred in semiconductor manufacturing, an AI system analyzed 3 months of process data and identified temperature deviation in a specific chamber as the root cause within 10 minutes—a 95% time reduction compared to manual analysis.

Important Note: AI RCA is a tool that achieves optimal results when combined with domain knowledge of field experts. Data quality and sufficient historical data are key to success.