Recent developments in process design have focused on establishing optimization-based approaches to support decision-making under uncertainty, but few efforts have been made to study and consider how information regarding this uncertainty affects optimal decision. In this paper we develop an optimal design framework that, besides integrating process profitability, robustness and quality issues, allows one to decide how much it is worth to spend in research and experimentation for selectively reducing parameter uncertainties and guiding R&D activities. The design problem is thus formulated as a stochastic optimization problem, whose objective function includes an information cost term, leading to the identification of optimal parameter uncer...
This thesis explores different paradigms for incorporating uncertainty with optimization frameworks ...
Hazard identification and risk assessment are key aspects in process plant design. They are often ap...
Abstract: The Bayes principle from statistical decision theory provides a conceptual framework for q...
Recent developments in process design have focused on establishing optimization-based approaches to ...
The identification and incorporation of quality costs and robustness criteria is becoming a critical...
The design of a chemical process is a complex optimization problem. Process models are used to descr...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
he aim of this paper is to discuss the integration of uncertainity analysis in an thermo-economic op...
Abstract Methods of implementing uncertainty within nuclear reactor modelling have tr...
based design An important element of successful engineering design is the effective management of re...
In process design, the goal is to find a process structure that satisfies the desired targets and co...
! In practice: Large amount of uncertainty possible " model mismatch " variable initial co...
Hazard identification and risk assessment are key aspects in process plant design. They are often ap...
This thesis explores different paradigms for incorporating uncertainty with optimization frameworks ...
Hazard identification and risk assessment are key aspects in process plant design. They are often ap...
Abstract: The Bayes principle from statistical decision theory provides a conceptual framework for q...
Recent developments in process design have focused on establishing optimization-based approaches to ...
The identification and incorporation of quality costs and robustness criteria is becoming a critical...
The design of a chemical process is a complex optimization problem. Process models are used to descr...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
he aim of this paper is to discuss the integration of uncertainity analysis in an thermo-economic op...
Abstract Methods of implementing uncertainty within nuclear reactor modelling have tr...
based design An important element of successful engineering design is the effective management of re...
In process design, the goal is to find a process structure that satisfies the desired targets and co...
! In practice: Large amount of uncertainty possible " model mismatch " variable initial co...
Hazard identification and risk assessment are key aspects in process plant design. They are often ap...
This thesis explores different paradigms for incorporating uncertainty with optimization frameworks ...
Hazard identification and risk assessment are key aspects in process plant design. They are often ap...
Abstract: The Bayes principle from statistical decision theory provides a conceptual framework for q...