2011
DOI: 10.1016/j.asoc.2009.12.002
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Neuro-genetic approach to optimize parameter design of dynamic multiresponse experiments

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Cited by 37 publications
(29 citation statements)
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“…Further, a signal factor with three levels 1 M , 2 M and 3 M , and a noise factor with two levels 1 N and 2 N were considered. The experimental design used by Chang and Chen (2011) is the same as given in Table 1. The specification limits for the response variables and the simulated experimental data are available in Chang and Chen (2011).…”
Section: Tablementioning
confidence: 99%
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“…Further, a signal factor with three levels 1 M , 2 M and 3 M , and a noise factor with two levels 1 N and 2 N were considered. The experimental design used by Chang and Chen (2011) is the same as given in Table 1. The specification limits for the response variables and the simulated experimental data are available in Chang and Chen (2011).…”
Section: Tablementioning
confidence: 99%
“…Realizing the need of the modern industries, some authors took research interest in developing appropriate procedure for optimizing multi-response dynamic systems. Different researchers have advocated different approaches for modelling the multiple responses but most of them (Tong et al, 2001;Hsieh et al, 2004;Chang, 2006;Chang, 2008;Wu, 2009;Chang and Chen, 2011) have used CDF as the performance metric for optimization of the multi-response dynamic systems. Tong et al (2004), Wang and Tong (2004), Wu and Yeh (2005), Wang (2007) and Gauri (2014) have used different performance metrics.…”
Section: The Approaches For Optimizing a Multi-response Dynamic Systemmentioning
confidence: 99%
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“…Chang [23] proposed a data mining approach which uses artificial neural networks, desirability functions, and simulated annealing algorithm to optimize problems with dynamic multiple responses. Chang and Chen [24] used a genetic algorithm to optimize a dynamic multi-response model which was created using ANN. Storm et al [25] extended classical response surface methodology for modeling time series response data.…”
Section: Introductionmentioning
confidence: 99%