Order of Addition in Mixture-Amount Experiments
Taha Hasan, Touqeer Ahmad

TL;DR
This paper develops efficient experimental designs for mixture-amount experiments considering the order of addition, using optimization algorithms to balance design efficiency and number of runs, enabling better estimation of effects.
Contribution
It introduces a method to select optimal subset designs for order-of-addition mixture experiments that maximize G-efficiency while controlling experimental runs.
Findings
Designs support estimation of mixture and order effects
Threshold Accepting algorithm effectively selects efficient designs
FDS plots visually assess design prediction capabilities
Abstract
In a mixture experiment, we study the behavior and properties of mixture components, where the primary focus is on the proportions of the components that make up the mixture rather than the total amount. Mixture-amount experiments are specialized types of mixture experiments where both the proportions of the components in the mixture and the total amount of the mixture are of interest. In this paper, we consider an Order-of-Addition (OofA) mixture-amount experiment in which the response depends on both the mixture amounts of components and their order of addition. Full mixture OofA designs are constructed to maintain orthogonality between the mixture-amount model terms and the effects of the order of addition. \answer{But the number of runs in such full OofA designs increases as increases. We employ the Threshold Accepting (TA) Algorithm to select an n-row subset from the full…
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Taxonomy
TopicsAcoustic Wave Phenomena Research · Flow Measurement and Analysis
