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Process Optimization
DOE - Design of Experiments - The efficient planning and running of successful statistical tests
Benefits of DOE:
"Design of experiments" is a method for planning statistical tests
and experiments in the development and improvement phase of
products and processes.
Because every test requires an expense of manpower, material
and time, DOE improves the situation by reducing the number
of required tests. The goal is to get maximum knowledge
about the variables and unknowns with minimum testing.
The approach is to develop test runs by varying multiple
factors within one test and then using statistical methods
to analyze the results. In this manner, the total number
of test runs and expense can be reduced.
Our Range of Services:
We will train your staff in DOE. You can decide whether the course is held in your local facility or in a perfectly equipped conference center (to keep the daily routines at bay). We can also conduct your Design of Experiments as a consulting service. In this case our experts will explain the procedure and the requirements to you and your staff in a step by step manner, defining all the needed activities and parameters. This way you and your staff will gain valuable experience in DOE and in controlling your process parameters.
Content:
The participant will learn the following: how to successfully
integrate DOE methods into the daily routines of their
company, how to optimize processes by identification
of key product parameters, how to design robust products
with minimal variation, the scope and limitations of DOE,
the practical approach to DOE with theory kept to a minimum,
an understanding of the advantages and drawbacks of the
method, and best practice approaches with
theoretical/mathematical background.
- The Taguchi and Shainin methods
- Ultramax and genetic algorithms including project selection and problem analysis
- Experimental design with orthogonal arrays
- Allocation of signal parameters, noise factors and interactions
- Signal-to-noise-ratio analysis, analysis of variance (ANOVA), dynamic design
- Interpretation of test results and confirmation tests
- Product optimization (product parameters)
- Process optimization (process parameters)