optimization of multi-response dynamic systems using principal component analysis (pca)-based utility theory approach
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2014
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Abstract
Optimization of a multi-response dynamic system aims at finding out a setting combination of input controllable factors that would result in optimum values for all response variables at all signal levels. In real life situation, often the multiple responses are found to be correlated. The main advantage of PCA-based approaches is that it takes into account the correlation among the multiple responses. Two PCA-based approaches that are commonly used for optimization of multiple responses in dynamic system are PCA-based technique for order preference by similarity to ideal solution (TOPSIS) and PCA-based multiple criteria evaluation of the grey relational model (MCE-GRM). This paper presents a new PCA-based approach, called PCA-based utility theory (UT) approach, for optimization of multiple dynamic responses and compares its optimization performance with other existing PCA-based approaches. The results show that the proposed PCA-based UT method is superior to the other PCA-based approaches.
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gauri2014internationaloptimization
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| Authors | ;Susanta Kumar Gauri |
| Journal | boletin latinoamericano y del caribe de plantas medicinales y aromaticas |
| Year | 2014 |
| DOI |
10.5267/j.ijiec.2013.09.004
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