Designing a production process normally is involved with some important constraints such as uncertainty, trade-off between production costs and quality, customer’s expectations and production tolerances. In this paper, a novel multi-objective robust optimization model is introduced to investigate the best levels of design variables. The primary objective is to minimize the production cost while increasing robustness and performance. The response surface methodology is utilized as a common approximation model to fit the relationship between responses and design variables in the worst-case scenario of uncertainties. The target mean ratio α is applied to ensure the quality of the process by providing the robustness for all types of quality cha...
Generally, synthesis and design of an optimal process is a challenging task. The procedure includes ...
Production efficiency in metal forming processes can be improved by implementing robust optimization...
In simulation-based process design, model parameters, like thermodynamic data, are affected by uncer...
The identification and incorporation of quality costs and robustness criteria is becoming a critical...
When a production facility is designed, there are various parameters affecting the number machines s...
Most industrial processes and products are evaluated by more than one quality characteristic. To sel...
The design of a chemical process is a complex optimization problem. Process models are used to descr...
This article introduces a framework for including different uncertainties at the chemical plant desi...
Model-based design principles have received considerable attention in biotechnology and the chemical...
Methods that use robust optimization are aimed at finding robustness to decision uncertainty. Uncert...
Quality characteristics (QCs) are important product performance variables that determine customer sa...
Under intense industry competition, decision makers must ensure that products demanded by consumers ...
Dynamic optimization or optimal control problems are omnipresent in the (bio)chemical industry. In a...
Robust design is a well-known quality improvement method that focuses on building quality into the d...
Robust design (parameter design), originally proposed by Taguchi, is a quality engineering method fo...
Generally, synthesis and design of an optimal process is a challenging task. The procedure includes ...
Production efficiency in metal forming processes can be improved by implementing robust optimization...
In simulation-based process design, model parameters, like thermodynamic data, are affected by uncer...
The identification and incorporation of quality costs and robustness criteria is becoming a critical...
When a production facility is designed, there are various parameters affecting the number machines s...
Most industrial processes and products are evaluated by more than one quality characteristic. To sel...
The design of a chemical process is a complex optimization problem. Process models are used to descr...
This article introduces a framework for including different uncertainties at the chemical plant desi...
Model-based design principles have received considerable attention in biotechnology and the chemical...
Methods that use robust optimization are aimed at finding robustness to decision uncertainty. Uncert...
Quality characteristics (QCs) are important product performance variables that determine customer sa...
Under intense industry competition, decision makers must ensure that products demanded by consumers ...
Dynamic optimization or optimal control problems are omnipresent in the (bio)chemical industry. In a...
Robust design is a well-known quality improvement method that focuses on building quality into the d...
Robust design (parameter design), originally proposed by Taguchi, is a quality engineering method fo...
Generally, synthesis and design of an optimal process is a challenging task. The procedure includes ...
Production efficiency in metal forming processes can be improved by implementing robust optimization...
In simulation-based process design, model parameters, like thermodynamic data, are affected by uncer...