Real-time optimization (RTO) is widely used in industry to improve the steady-state performance of a process using the available measurements, reacting to changing prices and demands scenarios and respecting operating, contractual, and environmental constraints. Traditionally, RTO has used nonlinear continuous formulations to model the process. Mixed-integer formulations have not been used in RTO, because of the need of a fast solution (on the order of seconds or a few minutes), and because many discrete decisions, such as startups or shutdowns, are taken with less frequency in a scheduling layer. This work proposes the use of disjunctions in RTO models, listing a series of examples of discrete decisions (different to startups or shutdowns)...
Due to current changes in the global market with increasing competition, strict bounds on product sp...
The idea of iterative process optimization based on collected output measurements, or "real-time opt...
In the context of real-time optimization, modifier-adaptation schemes update the model-based optimiz...
Real-time optimization (RTO) is widely used in industry to improve the steady-state performance of a...
Throughout the petroleum and chemicals industry, the control and optimization of many large-scale sy...
Process optimization is the method of choice for improving the performance of industrial processes, ...
The rise of new digital technologies and their applications in several areas pushes the process indu...
Real-time optimization (RTO) is an established technology, where the process economics are optimized...
Real-time optimization (RTO) is widely used in industry to operate processes close to their maximum ...
In dynamic optimization problems, the optimal input profiles are typically obtained using models tha...
ABSTRACT. Real-time optimization (RTO) is a class of methods that use measurements to reject the eff...
In the framework of real-time optimization, measurements are used to compensate for effects of uncer...
The idea of iterative process optimization based on collected output mea-surements, or “real-time op...
Real-time optimization (RTO) has gained growing attention during the past few years as a useful appr...
Real-time optimization (RTO) is widely used in industry to operate processes close to their maximum ...
Due to current changes in the global market with increasing competition, strict bounds on product sp...
The idea of iterative process optimization based on collected output measurements, or "real-time opt...
In the context of real-time optimization, modifier-adaptation schemes update the model-based optimiz...
Real-time optimization (RTO) is widely used in industry to improve the steady-state performance of a...
Throughout the petroleum and chemicals industry, the control and optimization of many large-scale sy...
Process optimization is the method of choice for improving the performance of industrial processes, ...
The rise of new digital technologies and their applications in several areas pushes the process indu...
Real-time optimization (RTO) is an established technology, where the process economics are optimized...
Real-time optimization (RTO) is widely used in industry to operate processes close to their maximum ...
In dynamic optimization problems, the optimal input profiles are typically obtained using models tha...
ABSTRACT. Real-time optimization (RTO) is a class of methods that use measurements to reject the eff...
In the framework of real-time optimization, measurements are used to compensate for effects of uncer...
The idea of iterative process optimization based on collected output mea-surements, or “real-time op...
Real-time optimization (RTO) has gained growing attention during the past few years as a useful appr...
Real-time optimization (RTO) is widely used in industry to operate processes close to their maximum ...
Due to current changes in the global market with increasing competition, strict bounds on product sp...
The idea of iterative process optimization based on collected output measurements, or "real-time opt...
In the context of real-time optimization, modifier-adaptation schemes update the model-based optimiz...