Robust Design for Manufacturability

Course Summary

This course is designed for engineers, quality professionals, researchers, and managers who need to implement improvements in manufacturing and want to learn methods to reduce the effect of noise variables or show that noise variables are not drivers of the process.

Event Details

8 hours
Instructor-led class training, with opportunities to practice learned skills using prepared data
Minitab or JMP Statistical Software along with a customized Excel Solution for a Dual Response Model

Description

Most experimental design projects tend to stop after screening, characterizing, or optimizing.  However, once a process is optimized, it may need to be implemented in manufacturing. To make the process manufacturable, the process noise variables (e.g. raw material batches, various machines, various operators, etc.) need to be considered. Robust design provides a method to leverage controllable factors to mitigate the transmission of variation from noise variables to process outputs. A dual response model is considered to keep the process mean on target, while reducing noise as much as possible.

In addition, before release of a process to manufacturing, the effects of noise can be quantified via a ruggedness test to ensure that noise variables are not drivers of the process. Both robustness and ruggedness are practical methods to help to make processes more manufacturable.

Who Should Attend

This course is designed for engineers, quality professionals, researchers, and managers who need to implement improvements in manufacturing and want to learn methods to reduce the effect of noise variables or show that noise variables are not drivers of the process.

Learning Objectives

Through training, participants will:

  • Understand Taguchi ideas of robustness, classification of variables, and loss
  • Know how to improve the practical side of manufacturing to limit the effect of noise
  • Know how to plan, conduct, and analyze designs for robustness improvement
  • Know how to plan, conduct, and analyze designs for ruggedness testing

Course Outline

Important Taguchi Ideas

  • Robustness & Ruggedness
  • Classification of Variables
  • Signal to Noise Responses
  • Orthogonal Arrays

Robust Designs

  • Controllable × Noise Variable Interaction
  • Dual Response Model for Location and Dispersion

Experimental Designs for Robustness and Simultaneous Optimization and Robustness

  • Analysis and Interpretation
  • Ruggedness Testing
  • Res III Designs
  • Replication Noise

Prerequisites

Instructors

Upcoming Events

Customer Reviews

0
    Your Cart
    Your cart is emptyReturn to Shop
    Reap the benefits

    Login with your Membership Credentials

    Not Yet a Member? Request Membership Now

    Interested in this course for the Future?

    Thanks for letting us know!
    Please fill in the information below so that we can keep you informed.
    Name
    I'm not registering yet because



    Introducing our Updated Website Designed to Enhance your Experience

    Explore our revamped website and experience a more user-friendly interface designed to serve you better!

    Thank you for visiting QSG!

    If you have any questions, would like more information, or would like to speak with a QSG representative, please contact us at any time!