Chemical process operation optimization aims at obtaining the optimal operating set-points by real-time solution of an optimization problem that embeds a steady-state model of the process. This task is challenged by unavoidable Uncertain Parameters (UPs) variations. MultiParametric Programming (MPP) is an approach for solving this challenge, where the optimal set-points must be updated online, reacting to sudden changes in the UPs. MPP provides algebraic functions describing the optimal solution as a function of the UPs, which allows alleviating large computational cost required for solving the optimization problem each time the UPs values vary. However, MPP applicability requires a well-constructed mathematical model of the process, which ...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
Chemical process design is still an active area of research since it largely determines the optimal ...
Automation of composition and optimisation of multicomponent predictive systems (MCPSs) made of a nu...
Process models are always associated with uncertainty, due to either inaccurate model structure or i...
Model predictive control provides the optimal operation for chemical processes by explicitly account...
In the chemical process industry, the decision-making hierarchy is inherently model-based. The scale...
Optimization plays an important role in the operation of chemical engineering systems. Due to their ...
Knowledge-based operation optimization methods may suffer from difficulties in modeling the chemical...
Automated development of chemical processes requires access to sophisticated algorithms for multi-ob...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
Sustainable design and operation are key requirements for the current chemical process industry. To ...
Research and development of new processes is a fundamental part of any innovative industry. For proc...
Abstract Mathematical optimization techniques are on their way to becoming a standard tool in chemic...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
Recent decades have prompted chemical manufacturers to consider new operating paradigms. Globalizati...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
Chemical process design is still an active area of research since it largely determines the optimal ...
Automation of composition and optimisation of multicomponent predictive systems (MCPSs) made of a nu...
Process models are always associated with uncertainty, due to either inaccurate model structure or i...
Model predictive control provides the optimal operation for chemical processes by explicitly account...
In the chemical process industry, the decision-making hierarchy is inherently model-based. The scale...
Optimization plays an important role in the operation of chemical engineering systems. Due to their ...
Knowledge-based operation optimization methods may suffer from difficulties in modeling the chemical...
Automated development of chemical processes requires access to sophisticated algorithms for multi-ob...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
Sustainable design and operation are key requirements for the current chemical process industry. To ...
Research and development of new processes is a fundamental part of any innovative industry. For proc...
Abstract Mathematical optimization techniques are on their way to becoming a standard tool in chemic...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
Recent decades have prompted chemical manufacturers to consider new operating paradigms. Globalizati...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
Chemical process design is still an active area of research since it largely determines the optimal ...
Automation of composition and optimisation of multicomponent predictive systems (MCPSs) made of a nu...