Type: Package
Title: Minimally Changed Two-Level Half-Fractional Factorial Designs
Version: 0.1.0
Maintainer: Bijoy Chanda <bijoychanda08@gmail.com>
Description: In many agricultural, engineering, industrial, post-harvest and processing experiments, the number of factor level changes and hence the total number of changes is of serious concern as such experiments may consists of hard-to-change factors where it is physically very difficult to change levels of some factors or sometime such experiments may require normalization time to obtain adequate operating condition. For this reason, run orders that offer the minimum number of factor level changes and at the same time minimize the possible influence of systematic trend effects on the experimentation have been sought. Factorial designs with minimum changes in factors level may be preferred for such situations as these minimally changed run orders will minimize the cost of the experiments. This technique can be employed to any half replicate of two level factorial run order where the number of factors are greater than two. For method details see, Bhowmik, A., Varghese, E., Jaggi, S. and Varghese, C. (2017) <doi:10.1080/03610926.2016.1152490>. This package generates all possible minimally changed two-level half-fractional factorial designs for different experimental setups along with various statistical criteria to measure the performance of these designs through a user-friendly interface. It consist of the function minimal.2halfFFD() which launches the application interface.
License: GPL-3
Encoding: UTF-8
Imports: shiny, hrtlFMC, shinybusy
Suggests: testthat (≥ 3.0.0), roxygen2, knitr, rmarkdown
VignetteBuilder: knitr
NeedsCompilation: no
RoxygenNote: 7.3.2
Packaged: 2025-11-27 05:12:34 UTC; Bijoy Chanda
Author: Bijoy Chanda [aut, cre, ctb], Arpan Bhowmik [aut, ctb], Seema Jaggi [aut], Eldho Varghese [aut, ctb], Cini Varghese [aut], Anindita Datta [aut], Dibyendu Deb [aut]
Repository: CRAN
Date/Publication: 2025-12-02 15:10:02 UTC

Construct All Possible Minimally Changed Two-Level Half-Fractional Factorial Designs

Description

In Design of Experiments (DOE) theory, the two levels of a factor are commonly represented as integers, for example, -1 for the low level and +1 for the high level. The 'minimal.2halfFFD()' function launches an interactive shiny application that enables users to construct and explore all possible minimally changed two-level half-fractional factorial designs. These designs are particularly useful in experiments involving hard-to-change factors or situations where frequent factor-level changes are costly or time-consuming.

Usage

minimal.2halfFFD()

Details

The shiny application provides an intuitive and visually organized interface for constructing and analyzing all possible minimally changed two-level half-fractional factorial designs. It is particularly suited for experiments where some factors are difficult or costly to change between runs.

The interface is divided into two main sections:

1. Input Panel (Left Side):

2. Results Panel (Right Side): After clicking the Generate button, results are displayed in a structured, color-coded layout. A dropdown menu titled 'Select Result to Display' allows users to choose what to view:

Value

Opens a user-friendly interactive shiny application for generating minimally changed two-level half-fractional factorial designs

References

Bhowmik, A., Varghese, E., Jaggi, S., and Varghese, C. (2015). Factorial experiments with minimum changes in run sequences. Journal of the Indian Society of Agricultural Statistics, 69(3), 243-255.

Bhowmik, A., Varghese, E., Jaggi, S., and Varghese, C. (2017). Minimally changed run sequences in factorial experiments. Communications in Statistics-Theory and Methods, 46(15), 7444-7459.

Bhowmik, A., Varghese, E., Jaggi, S., and Varghese, C. (2020). On the generation of factorial designs with minimum level changes. Communications in Statistics-Simulation and Computation, 51(6), 3400-3409.

Chanda, B., Bhowmik, A., Jaggi, S., Varghese, E., Datta, A., Varghese, C., Das Saha, N., Bhatia, A., and Chakrabarti, B. (2021). Minimal cost multifactor experiments for agricultural research involving hard-to-change factors. Indian Journal of Agricultural Sciences, 91(7), 97-100.

Tack, L., and Vandebroek, M. (2001). (Dt, C)-optimal run orders. Journal of Statistical Planning and Inference, 98, 293-310.

Examples

if (interactive()) {
  minimal.2halfFFD()
}

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