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Design of Experiments Optimization Strategies

 

Many ways to design experiments

Experimental optimization can be carried out in several ways. Most popular is the one-variable-at-a-time approach. This approach is however extremely inefficient in locating the true optimum when interaction effects are present.

Multivariable design of experiments are since many years used to overcome the problems with interaction effects. There are two general groups of designs to choose from: Sequential or simultaneous experiment designs. The choice depends of the purpose of the study.

Sequential design of experiments

Sequential design of experiments are very useful for optimization studies. Experiments are successively performed in a direction of improvement until the optimum is reached. The far most useful method is the simplex approach, described in many hundreds of publications during recent years. The simplex method can handle many variables with only a few trials, and does not require any assumptions with regard to the underlying model. The simplex optimization also starts with a design, consisting of as many trials as there are variables plus one (a simplex is a k+1 geometric figure in a k-dimensional space). Subsequent trials are calculated by reflection towards improved conditions. The modified simplex method also adjusts the size of the design to further increase the rate of improvement.

Simultaneous (statistical) design of experiments

Empirical models are best built with traditional simultaneous (statistical) experiment designs, e.g. response surface designs. The optimal variable settings should then be known beforehand, with understanding as the primary goal. These designs are sometimes also used for the purpose of optimization, but this involves several steps with many trials. As a consequence these studies are usually limited to only a few variables, with a substantial risk of missing the true optimum. If the model does not include all relevant variables and/or does not cover the optimum its value is diminished. Empirical model building is therefore generally inefficient as primary optimization technique, but useful to gain scientific insight.

A joint approach

Are these both approaches, sequential and simultaneous design of experiments, competing alternatives or can they be joined into a comprehensive and effective optimization and model-building strategy? Our application partner in the US, Statistical Designs, may have come up with the answer. Their approach is first to optimize and then to study variable effects, significance, etc. (i.e. model-building):

"In the past, optimization usually required answers to three ordered questions:

  1. What variables are the most significant?
  2. In what way do they affect the quality of the product or process?
  3. What is the optimal combination of settings for these significant variables?

This historical approach to optimization is slow and expensive. An alternative approach to optimization answers the same three questions in reverse order:

  1. What is the optimal combination of settings of the variables?
  2. In what way do the variables affect the quality of this product or process in the region of the optimum?
  3. What variables are most significant in the region of the optimum?

Clearly, this approach requires efficient optimization strategies. For many optimization projects in research, development, and manufacturing, the sequential simplex (an EVOP technique) is the method of choice."

Conclusions

Some general conclusions that can be drawn from this:

  • Use the sequential simplex method for experimental optimization.
  • Use traditional statistical design of experiments for model-building.
  • Always optimize before applying the traditional statistical design of experiments.

Literature

Statistical Methods and the Chemist by R. M. Driver, Chem. Brit. 6:4 pp. 154-158 (1970).

Sequential Simplex Optimization. A Technique for Improving Quality and Productivity in Research, Development, and Manufacturing by Walters, Parker, Morgan and Deming, CRC Press 1991.

Chemometrics - Application of Mathematics and Statistics to Laboratory Systems by R. G. Brereton, Ellis Horwood Ltd. 1990.

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