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  • USE CASE
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    Other Molding process line optimization model derivation

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    작성일Date 25-08-18 09:56

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    AI-based molding process line optimization model derivation demonstration

    This is ImpIx's AI solution that optimizes the operation of high-pressure molding processes.
     
    1. Pain Point

    Industrial characteristics

    - Analysis and standardization of the causal relationship between environmental factors such as pressure, temperature, and humidity, which vary depending on the characteristics of raw materials, and production efficiency are required.

    - Issues exist regarding yield reduction due to quality variations and high defect rates despite high operating rates and production volumes in high-pressure molding processes.



    Data and System Aspects

    - Improvement is needed to reduce reliance on the experience and subjective judgments of highly skilled workers after MES-based data collection.

    - Criteria for identifying causes and adjusting equipment settings are absent when defects occur.

    Equipment and infrastructure aspects

    - There is a lack of standard work procedures and equipment setting guidelines for the high-pressure molding process. 

    - There is a need for correlation analysis between defect types and key variables.  

    - There is a need to establish a data-based process optimization and rapid feedback system.



    2. AI Solution

    Impix's A2LAB AI Solution

    - Improved learning performance of defective data through EDA (exploratory data analysis), missing value removal, and SMOTE-based oversampling.

    - Real-time data linkage and AI analysis automation using MES and sensor data.

    - AI-based process simulation, visualization, and provision of optimal equipment setting values to create a structure that is easy for end users to utilize.

     

    3. Construction Goals

    Detailed Goals

    - Promote optimization and standardization of high-pressure molding processes through AI-based data analysis.

    - Establish a data-based decision-making system to identify the causes of defects and lay the foundation for improvement.

    - Lay the foundation for a competitive intelligent smart factory through quality and yield improvements.

    - Secure the basis for verification of company-wide expansion and applicability to other processes and factories.


     

    4. Construction Details

    Data Integration Management

    - Build and manage a dataset for AI analysis by integrating MES, sensor, and manual data.

    AI-based analysis and modeling

    - Analyze the correlation between variables and quality and derive key variables.

    - Build and validate a process optimization model based on XGBoost.

    Simulation and field application

    - Build analysis and simulation functions based on VM servers and BI tools.

    - Utilize quality and yield prediction functions prior to adjusting equipment settings through process simulation functions.

     

     

    5. Construction Effects

    Monthly Production Volume Increase

     5,087 EA → 6,899 EA

    Process Defect Rate Reduction

     33.0% → 14.0%