Practical problems in mixture experiments are usually associated with the investigation of mixture of m ingredients, which are assumed to influence the response through the proportions in which they are blended together. Mixture experiments are modeled using Scheffe’ models or Kronecker models whichever that is applicable. In such problems, the response of mixture experiments may also be affected by the conditions under which the mixture in conducted. This creates a shift in the blending characteristics of the mixture ingredients hence affecting the end product hence the need for inclusion of these conditions during modeling of mixture experiments. The objective of this study is to construct D-optimal designs for mixture experiments in the presence of process variables. In order to achieve this, first, a combined model of the second-degree Kronecker model for mixture experiments and the second-degree polynomial in the process variables in developed. The D-optimal designs are constructed using a Monte Carlo algorithmic approach in the AlgDesign of the R-packages. The designs constructed in this study were augmented with two replications of a level of the process variable. The D-optimal designs are evaluated using their D-optimal values and their relative D-efficiencies. The results of this study illustrate the existence of two alternate designs; one replicating at (-1, -1) and (-1, 1) in Table 2 and the other replicating at (0, 0) in Table 1. In conclusion the results of this study indicate that a design replicating at different levels of the process variable performs better than the one replicating at the overall centroid.
| Published in | American Journal of Theoretical and Applied Statistics (Volume 14, Issue 5) | 
| DOI | 10.11648/j.ajtas.20251405.13 | 
| Page(s) | 236-249 | 
| Creative Commons | 
 This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. | 
| Copyright | Copyright © The Author(s), 2025. Published by Science Publishing Group | 
Mixture Experiment, Mixture Ingredients, Process Variables, Kronecker Product, Moment Matrix, D-Optimal
 be the unity vector, whence,
be the unity vector, whence,         is the sum of the ingredients of t. Therefore, the experimental conditions are points in the probability simplex, which constitute the independent and controlled variables with the experimental domain being the simplex,
 is the sum of the ingredients of t. Therefore, the experimental conditions are points in the probability simplex, which constitute the independent and controlled variables with the experimental domain being the simplex,         . Under experimental conditions
. Under experimental conditions          , the experimental response Yt is taken to be a scalar random variable. Replications under identical experimental conditions or response from distinct experimental conditions are assumed to be of equal (unknown) variance,
, the experimental response Yt is taken to be a scalar random variable. Replications under identical experimental conditions or response from distinct experimental conditions are assumed to be of equal (unknown) variance,          , and uncorrelated. An experimental design  is a probability measure on the experimental domain  with finite support points of. If  assigns weights w1, w2,… to its points of support in , then the experimenter is directed to draw proportions w1, w2,… of all observations under the respective experimental conditions.
, and uncorrelated. An experimental design  is a probability measure on the experimental domain  with finite support points of. If  assigns weights w1, w2,… to its points of support in , then the experimenter is directed to draw proportions w1, w2,… of all observations under the respective experimental conditions.       on the matrix of all cross products:
 on the matrix of all cross products:       ,
,       . The benefits enjoyed are; that distinct terms are repeated appropriately according to the number of times they can arise, that transformational rules with a conformable matrix R become simple,
. The benefits enjoyed are; that distinct terms are repeated appropriately according to the number of times they can arise, that transformational rules with a conformable matrix R become simple,          and that the approach extends to third degree polynomial regression.
 and that the approach extends to third degree polynomial regression.       matrix A and a
 matrix A and a          matrix B, their Kronecker product
matrix B, their Kronecker product          is defined to be the
 is defined to be the          block matrix
 block matrix       .
.       and another vector
 and another vector          then is simply a special case
 then is simply a special case       .
.       .
.       for Moore-Penrose inversion,
 for Moore-Penrose inversion,          and if possible for regular inversion
 and if possible for regular inversion         .
.       is also an orthogonal matrix.
is also an orthogonal matrix.       assembles the cross products
 assembles the cross products          in an
 in an          array, the Kronecker square
 array, the Kronecker square          arranges the same numbers as a long
 arranges the same numbers as a long          vector. The transformation with a conformable matrix R simply amounts to
 vector. The transformation with a conformable matrix R simply amounts to         . This greatly facilitates the calculations we apply to response surface models.
. This greatly facilitates the calculations we apply to response surface models.       is provided by Kiefer’s
 is provided by Kiefer’s          , with
, with          . These are defined by;
. These are defined by;       
       matrices. Here
 matrices. Here          stands for the smallest eigenvalue of C. By definition,
stands for the smallest eigenvalue of C. By definition,          is a function of the eigenvalues of C for all
 is a function of the eigenvalues of C for all         Pukelsheim
 Pukelsheim  includes the often used T-, D-, A-, and E-criteria, corresponding to parameter values 1, 0, -1, and
 includes the often used T-, D-, A-, and E-criteria, corresponding to parameter values 1, 0, -1, and          respectively.
respectively.       , the m2x1 vector consisting of the squares and cross products of the components of t in the lexicographic order of the subscripts. This is referred to as Kronecker-model with a Kronecker-polynomial as the regression function
, the m2x1 vector consisting of the squares and cross products of the components of t in the lexicographic order of the subscripts. This is referred to as Kronecker-model with a Kronecker-polynomial as the regression function       (1)
(1)       designs in that model. Draper, Heiligers and Pukelsheim
designs in that model. Draper, Heiligers and Pukelsheim  weighted centroid designs for
 weighted centroid designs for          by adopting the general equivalence theorem as given in Pukelsheim
by adopting the general equivalence theorem as given in Pukelsheim  .
.       , the second-degree Kronecker model for this experiment is given by
, the second-degree Kronecker model for this experiment is given by       (2)
(2)       , and therefore has
, and therefore has          terms in the mixture ingredients.
 terms in the mixture ingredients.       process variables
 process variables         .
.       (3)
(3)       terms in the process variables. Crossing the terms of model in equation (2) with model in equation (3) results in a combined Kronecker mixture process variable model as shown below
 terms in the process variables. Crossing the terms of model in equation (2) with model in equation (3) results in a combined Kronecker mixture process variable model as shown below       (4)
(4)       terms namely, the pure quadratic terms of the mixture ingredients, two-mixture ingredient interaction terms of the mixture ingredients, two-factor interaction of the process variables and the interaction between ingredients and the one-way interaction between the ingredients and the process variables.
 terms namely, the pure quadratic terms of the mixture ingredients, two-mixture ingredient interaction terms of the mixture ingredients, two-factor interaction of the process variables and the interaction between ingredients and the one-way interaction between the ingredients and the process variables.       mixture ingredients and
 mixture ingredients and          process variables. First a data frame consisting of the name of each variable, the limits, number of levels and the center points are specified. Using Monte Carlo algorithm, a D-Optimal split-plot design for the model equation (4) consisting of
 process variables. First a data frame consisting of the name of each variable, the limits, number of levels and the center points are specified. Using Monte Carlo algorithm, a D-Optimal split-plot design for the model equation (4) consisting of          design points arranged into
 design points arranged into          whole plots each consisting of
 whole plots each consisting of          subplots is constructed. The first design involves replicating the overall centroid of the mixture ingredient at the center of the process variables. The process involves combining algorithmic design construction and inclusion of center points. For first design, the algorithm resulted in the design in Table 1 as shown below.
 subplots is constructed. The first design involves replicating the overall centroid of the mixture ingredient at the center of the process variables. The process involves combining algorithmic design construction and inclusion of center points. For first design, the algorithm resulted in the design in Table 1 as shown below.      | Runs | |||||
|---|---|---|---|---|---|
| 1 | 0 | 1 | 0 | -1 | -1 | 
| 2 | 1 | 0 | 0 | -1 | -1 | 
| 3 | 0 | 0 | 1 | -1 | -1 | 
| 4 | 0.5 | 0 | 0.5 | -1 | -1 | 
| 5 | 0 | 0 | 1 | -1 | 1 | 
| 6 | 0 | 1 | 0 | -1 | 1 | 
| 7 | 0.5 | 0.5 | 0 | -1 | 1 | 
| 8 | 1 | 0 | 0 | -1 | 1 | 
| 9 | 0 | 0 | 1 | 1 | -1 | 
| 10 | 1 | 0 | 0 | 1 | -1 | 
| 11 | 0.5 | 0.5 | 0 | 1 | -1 | 
| 12 | 0 | 0.5 | 0.5 | 1 | -1 | 
| 13 | 0 | 0 | 1 | 1 | 1 | 
| 14 | 1 | 0 | 0 | 1 | 1 | 
| 15 | 0.5 | 0 | 0.5 | 1 | 1 | 
| 16 | 0 | 1 | 0 | 1 | 1 | 
| 17 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 18 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 19 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 20 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 21 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 22 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 23 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 24 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 25 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 26 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 27 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 28 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| Runs | |||||
|---|---|---|---|---|---|
| 1 | 0 | 1 | 0 | -1 | -1 | 
| 2 | 1 | 0 | 0 | -1 | -1 | 
| 3 | 0 | 0 | 1 | -1 | -1 | 
| 4 | 0.5 | 0 | 0.5 | -1 | -1 | 
| 5 | 0 | 1 | 0 | -1 | -1 | 
| 6 | 1 | 0 | 0 | -1 | -1 | 
| 7 | 0 | 0 | 1 | -1 | -1 | 
| 8 | 0.5 | 0 | 0.5 | -1 | -1 | 
| 9 | 0 | 0 | 1 | -1 | 1 | 
| 10 | 0 | 1 | 0 | -1 | 1 | 
| 11 | 0.5 | 0.5 | 0 | -1 | 1 | 
| 12 | 1 | 0 | 0 | -1 | 1 | 
| 13 | 0 | 0 | 1 | -1 | 1 | 
| 14 | 0 | 1 | 0 | -1 | 1 | 
| 15 | 0.5 | 0.5 | 0 | -1 | 1 | 
| 16 | 1 | 0 | 0 | -1 | 1 | 
| 17 | 0 | 0 | 1 | 1 | -1 | 
| 18 | 1 | 0 | 0 | 1 | -1 | 
| 19 | 0.5 | 0.5 | 0 | 1 | -1 | 
| 20 | 0 | 0.5 | 0.5 | 1 | -1 | 
| 21 | 0 | 0 | 1 | 1 | 1 | 
| 22 | 1 | 0 | 0 | 1 | 1 | 
| 23 | 0.5 | 0 | 0.5 | 1 | 1 | 
| 24 | 0 | 1 | 0 | 1 | 1 | 
| 25 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 26 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 27 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
| 28 | 1/3 | 1/3 | 1/3 | 0 | 0 | 
 mixture ingredients, let
 mixture ingredients, let          and
 and          process variables, that is, a combined MPV model of three mixture ingredients and two process variables. In order to obtain the moment matrix and the information matrix for the design in Table 1, the coefficient matrix K for the parameter subsystem of interest as follows;
 process variables, that is, a combined MPV model of three mixture ingredients and two process variables. In order to obtain the moment matrix and the information matrix for the design in Table 1, the coefficient matrix K for the parameter subsystem of interest as follows;       (5)
(5)       ,
,          ,
,          is the number of estimable parameters, and
 is the number of estimable parameters, and          is a prior weight defined by the experimenter. However, K may be extended by use of the matrices
is a prior weight defined by the experimenter. However, K may be extended by use of the matrices         where necessary. Let
 where necessary. Let          ,
,         and
 and         be defined as follows;
be defined as follows;       
         
         
       we find that
 we find that       
       is obtained as follows
 is obtained as follows       
       
       is given by
 is given by          , where,
, where,          . For the design given in Table 1, the
. For the design given in Table 1, the          matrix is given by
 matrix is given by       
       the information matrix now becomes
 the information matrix now becomes       
       
       the information matrix now becomes
 the information matrix now becomes       
       
       the information matrix now becomes
 the information matrix now becomes       
       
       mixture ingredients, let
 mixture ingredients, let          and
 and          process variables, that is, a combined MPV model of three mixture ingredients and two process variables. In order to obtain the moment matrix and the information matrix for the design in Table 2, the coefficient matrix K for the parameter subsystem of interest as obtained before, then the design matrix based on the second-degree Kronecker model for mixture experiments for three mixture ingredients and two process variables for the design in Table 2 is given by
 process variables, that is, a combined MPV model of three mixture ingredients and two process variables. In order to obtain the moment matrix and the information matrix for the design in Table 2, the coefficient matrix K for the parameter subsystem of interest as obtained before, then the design matrix based on the second-degree Kronecker model for mixture experiments for three mixture ingredients and two process variables for the design in Table 2 is given by       
       is given by
 is given by          , where,
, where,          .
.       matrix is given by
 matrix is given by       
       the information matrix now becomes
 the information matrix now becomes       
       
       the information matrix now becomes
 the information matrix now becomes       
       
       the information matrix now becomes
 the information matrix now becomes       
       
       .
.       
       and
 and          are the model design matrices of the two competing designs.
 are the model design matrices of the two competing designs.       be the design matrix of the design in Table 1 and
be the design matrix of the design in Table 1 and          be the design matrix of the design in Table 2, making use of this computation approach, the D-efficiencies for variance ratio
be the design matrix of the design in Table 2, making use of this computation approach, the D-efficiencies for variance ratio         is computed as follows:
 is computed as follows:       
       is computed as follows:
 is computed as follows:       
       is computed as follows:
 is computed as follows:       
      | A | Average | 
| C | Information matrix | 
| D | Determinant | 
| E | Eigenvalue | 
| MPV | Mixture process variable | 
| PD | Positive Definite | 
| T | Trace | 
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APA Style
Cherutich, M., Koske, J. A., Kosgei, M., Gregory, K. (2025). Construction of D-Optimal Split-Plot Designs for the Second-Degree Kronecker Model Mixture Experiments in the Presence of Process Variables. American Journal of Theoretical and Applied Statistics, 14(5), 236-249. https://doi.org/10.11648/j.ajtas.20251405.13
ACS Style
Cherutich, M.; Koske, J. A.; Kosgei, M.; Gregory, K. Construction of D-Optimal Split-Plot Designs for the Second-Degree Kronecker Model Mixture Experiments in the Presence of Process Variables. Am. J. Theor. Appl. Stat. 2025, 14(5), 236-249. doi: 10.11648/j.ajtas.20251405.13
@article{10.11648/j.ajtas.20251405.13,
  author = {Mike Cherutich and Jopseph Arap Koske and Mathew Kosgei and Kerich Gregory},
  title = {Construction of D-Optimal Split-Plot Designs for the Second-Degree Kronecker Model Mixture Experiments in the Presence of Process Variables
},
  journal = {American Journal of Theoretical and Applied Statistics},
  volume = {14},
  number = {5},
  pages = {236-249},
  doi = {10.11648/j.ajtas.20251405.13},
  url = {https://doi.org/10.11648/j.ajtas.20251405.13},
  eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ajtas.20251405.13},
  abstract = {Practical problems in mixture experiments are usually associated with the investigation of mixture of m ingredients, which are assumed to influence the response through the proportions in which they are blended together. Mixture experiments are modeled using Scheffe’ models or Kronecker models whichever that is applicable. In such problems, the response of mixture experiments may also be affected by the conditions under which the mixture in conducted. This creates a shift in the blending characteristics of the mixture ingredients hence affecting the end product hence the need for inclusion of these conditions during modeling of mixture experiments. The objective of this study is to construct D-optimal designs for mixture experiments in the presence of process variables. In order to achieve this, first, a combined model of the second-degree Kronecker model for mixture experiments and the second-degree polynomial in the process variables in developed. The D-optimal designs are constructed using a Monte Carlo algorithmic approach in the AlgDesign of the R-packages. The designs constructed in this study were augmented with two replications of a level of the process variable. The D-optimal designs are evaluated using their D-optimal values and their relative D-efficiencies. The results of this study illustrate the existence of two alternate designs; one replicating at (-1, -1) and (-1, 1) in Table 2 and the other replicating at (0, 0) in Table 1. In conclusion the results of this study indicate that a design replicating at different levels of the process variable performs better than the one replicating at the overall centroid.
},
 year = {2025}
}
											
										TY - JOUR T1 - Construction of D-Optimal Split-Plot Designs for the Second-Degree Kronecker Model Mixture Experiments in the Presence of Process Variables AU - Mike Cherutich AU - Jopseph Arap Koske AU - Mathew Kosgei AU - Kerich Gregory Y1 - 2025/10/27 PY - 2025 N1 - https://doi.org/10.11648/j.ajtas.20251405.13 DO - 10.11648/j.ajtas.20251405.13 T2 - American Journal of Theoretical and Applied Statistics JF - American Journal of Theoretical and Applied Statistics JO - American Journal of Theoretical and Applied Statistics SP - 236 EP - 249 PB - Science Publishing Group SN - 2326-9006 UR - https://doi.org/10.11648/j.ajtas.20251405.13 AB - Practical problems in mixture experiments are usually associated with the investigation of mixture of m ingredients, which are assumed to influence the response through the proportions in which they are blended together. Mixture experiments are modeled using Scheffe’ models or Kronecker models whichever that is applicable. In such problems, the response of mixture experiments may also be affected by the conditions under which the mixture in conducted. This creates a shift in the blending characteristics of the mixture ingredients hence affecting the end product hence the need for inclusion of these conditions during modeling of mixture experiments. The objective of this study is to construct D-optimal designs for mixture experiments in the presence of process variables. In order to achieve this, first, a combined model of the second-degree Kronecker model for mixture experiments and the second-degree polynomial in the process variables in developed. The D-optimal designs are constructed using a Monte Carlo algorithmic approach in the AlgDesign of the R-packages. The designs constructed in this study were augmented with two replications of a level of the process variable. The D-optimal designs are evaluated using their D-optimal values and their relative D-efficiencies. The results of this study illustrate the existence of two alternate designs; one replicating at (-1, -1) and (-1, 1) in Table 2 and the other replicating at (0, 0) in Table 1. In conclusion the results of this study indicate that a design replicating at different levels of the process variable performs better than the one replicating at the overall centroid. VL - 14 IS - 5 ER -