In dual-response-surface optimization, the mean and standard deviation responses are often in conflict. To obtain a satisfactory compromise, a Decision Maker (DM)'s preference information on the trade-offs between the responses should be incorporated into the problem. In most existing works, the DM expresses a subjective judgment on the responses through a preference parameter before the problem-solving process, after which a single solution is obtained. This study proposes a posterior preference articulation approach to dual-response-surface optimization. The posterior preference articulation approach initially finds a set of non-dominated solutions without the DM's preference information, and then allows the DM to select the best solution...
A dual-response surface optimization approach assumes that response surface models of the mean and s...
When optimizing a product or process with multiple responses, a two-stage Pareto front approach is a...
Nearly all real life systems have multiple quality characteristics where individual modeling and opt...
In multiresponse surface optimization (MRSO), responses are often in conflict. To obtain a satisfact...
Purpose: This paper aims at improving inefficiency of an existing posterior preference articulation ...
DoctorIn multiresponse surface optimization (MRSO), responses are often in conflict. To obtain a sat...
In Multi-Response Surface Optimization (MRSO), responses are often in conflict. To obtain a satisfac...
In Multi-Response Surface Optimization (MRSO), responses are often in conflict. To obtain a satisfac...
A desirability function approach has been widely used in multi-response optimization due to its simp...
In dual response surface optimization, minimizing weighted mean squared error (WMSE) is a simple yet...
Dual response surface optimization (DRSO), inspired by Taguchi’s philosophy, attempts to optim...
[[abstract]]Dual-response surface methodology is a powerful tool for simultaneously optimizing the m...
The focus of this dissertation is on improving decision-maker trade-offs and the development of a ne...
The dual response surface methodology is a widely used technique in industrial engineering for simul...
WOS: 000234321500003Designing high-quality products and processes at low cost is an economic and tec...
A dual-response surface optimization approach assumes that response surface models of the mean and s...
When optimizing a product or process with multiple responses, a two-stage Pareto front approach is a...
Nearly all real life systems have multiple quality characteristics where individual modeling and opt...
In multiresponse surface optimization (MRSO), responses are often in conflict. To obtain a satisfact...
Purpose: This paper aims at improving inefficiency of an existing posterior preference articulation ...
DoctorIn multiresponse surface optimization (MRSO), responses are often in conflict. To obtain a sat...
In Multi-Response Surface Optimization (MRSO), responses are often in conflict. To obtain a satisfac...
In Multi-Response Surface Optimization (MRSO), responses are often in conflict. To obtain a satisfac...
A desirability function approach has been widely used in multi-response optimization due to its simp...
In dual response surface optimization, minimizing weighted mean squared error (WMSE) is a simple yet...
Dual response surface optimization (DRSO), inspired by Taguchi’s philosophy, attempts to optim...
[[abstract]]Dual-response surface methodology is a powerful tool for simultaneously optimizing the m...
The focus of this dissertation is on improving decision-maker trade-offs and the development of a ne...
The dual response surface methodology is a widely used technique in industrial engineering for simul...
WOS: 000234321500003Designing high-quality products and processes at low cost is an economic and tec...
A dual-response surface optimization approach assumes that response surface models of the mean and s...
When optimizing a product or process with multiple responses, a two-stage Pareto front approach is a...
Nearly all real life systems have multiple quality characteristics where individual modeling and opt...