Technical Training

Design of Experiments

Overview

Unlike 'One Factor At A Time' (1FAT), DESIGN OF EXPERIMENTS (DOE)  is a powerful tool that enables you to investigate and manipulate multiple key process input variables concurrently in order to optimise a specific output or response variable. 

This course will expose learners to key knowledge required to design and analyse statistical experiments using Minitab. 

Pre-requisite: Basic Statistics with Minitab will be a distinct advantage. However, the first day of the course will be a review of basic statistical concepts relevant to DOE.

Content includes

Course Outline:

DAY 1: DOE STATISTICS
1 Understand key statistical concepts and definitions
ˇ Population, sample, types of data etc
ˇ Measures of process variation and central tendency
ˇ Descriptive and inferential statistics.

2 Understand the distribution of your data
ˇ Distribution parameters
ˇ Difference between PDF and CDF
ˇ Probability Distributions – normal, t, binomial, Poisson, F, Chi-square.

3 Review of Parameter Estimation and Statistical Inferences with Minitab
ˇ Confidence Intervals.
ˇ Hypothesis testing.
ˇ Analysis of Variance.
ˇ Goodness-of-fit test.
ˇ Individual Distribution Identification.

4 Review of Regression Analysis with Minitab.

DAY 2: DOE FUNDAMENTALS
1 Understanding DOE terms and concepts
ˇ independent and dependent variables,
ˇ factors and levels,
ˇ treatment, error, replication,
ˇ full and fractional designs,
ˇ screening experiments,
ˇ confounding, etc

2 Experimental Planning
ˇ Measurement systems analysis,
ˇ Identifying your objectives,
ˇ Identifying factors and responses of interest,
ˇ Design type selection,

3 Creating a Design In Minitab
ˇ Create a Full Factorial Design,
ˇ Understand Design Table,
ˇ Modify your design to Fractional Factorial,
ˇ Understand Aliasing and Alias Structure.

4 Manually Analyse A Full Factorial Design
ˇ Understand Main Effects,
ˇ Understand Interaction Effects

DAY 3: DESIGN AND ANALYSIS OF EXPERIMENTS
1 Create and Analyse A Screening Experiment
ˇ Definitive Screening Design.
ˇ Plackett-Burman Design
- Analyse Design Summary,
- Analyse Pareto Effects,
- Analyse Effects Plot,
- Analyse Main Effects,

2 Create and Analyse A Two-level Full Factorial Design
ˇ Create and store your design.
ˇ Analyse your design using available tools in Minitab
ˇ Four-in-One plot, probability plot,
ˇ ANOVA, Pareto, main and interaction plots etc.
ˇ Reduce model by screening out factors that are not statistically significant.
ˇ Optimise your design.
- Identify optimum settings using Contour plot, Surface Plot, Response Optimiser

3 Create A Response Surface Design.
ˇ Central Composite Design.
ˇ Response Surface with Categorical a factor.

4 Create and analyse a Split-Plot Design.

Who should attend

Manufacturing, Quality, R&D, Product Design Engineers, Inspection & Test personnel, Process Validation Team etc.

Upcoming dates:

No training dates available at the moment.

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Course

Design of Experiments

Training Days

3 virtual days

Training Location

Available nationally, based on demand

Course Cost

Subsidised rate: €690
Full cost: €895
* Cost quoted per person

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