
AbstractProcedures for sequential generation of nearlyD‐optimal designs are described. Two kinds of designs can be obtained: symmetrical block designs and nonsymmetrical ones. It is shown that in a special case when the number of the support points of a continuousD‐optimal design equals to the number of regression coefficients the sequential designs can be constructed very easy without use of a computer. A Catalogue containing 135 designs has been developed by use of these procedures. 34 of them can be used for experiments in cuboidal factor space and the remaining for experiments with mixture and process variables. Comparison with other designs is done.
Optimal statistical designs, Sequential statistical design, process variables, Statistical block designs, sequential generation of nearly D-optimal designs, experiments with mixtures
Optimal statistical designs, Sequential statistical design, process variables, Statistical block designs, sequential generation of nearly D-optimal designs, experiments with mixtures
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