The benefits of applying the range of technologies generally known as Model Predictive Control (MPC) to the control of industrial processes have been well documented in recent years. One of the principal drawbacks to MPC schemes are the relatively high on-line computational burdens when used with adaptive, constrained and/or multivariable processes, which has warranted some researchers and practitioners to seek simplified approaches for its implementation. To date, several schemes have been proposed based around a simplified 1-norm formulation of multivariable MPC, which is solved online using the simplex algorithm in both the unconstrained and constrained cases. In this paper a 2-norm approach to simplified multivariable MPC is formulated,...
Teaching multivariable control usually involves a certain level of mathematical sophistication and h...
Explicit model predictive control (MPC) addresses the problem of removing one of the main drawbacks ...
Due to the ability to handle constraints systematically and predict system evolution with models, mo...
The benefits of applying the range of technologies generally known as Model Predictive Control (MPC)...
Model Predictive Control (MPC) is used to solve challenging multivariable-constrained control proble...
The control of multi-input multi-output (MIMO) systems is a common problem in practical control scen...
Modern day industrial processes are becoming ever more complex and require a method that is computat...
This project thesis provides a brief overview of Model Predictive Control (MPC).A brief history of i...
Process control in industries is becoming more critical due to demands on reducing consumed energy, ...
A significantly important part of model predictive control (MPC) with constraints is a solution of a...
Nowadays, optimality is a major concern in modern controlled systems, and since optimality generally...
Model predictive control (MPC) has demonstrated exceptional success for the high-performance control...
Model Predictive control (MPC) is shown to be particularly effective for the self-tuning control of ...
ne of the fundamental difficulties en-countered throughout process con-trol is the presence of time ...
Non-minimum phase Multi-input Multi-Ouput (MIMO) systems are known to be difficult to control. Model...
Teaching multivariable control usually involves a certain level of mathematical sophistication and h...
Explicit model predictive control (MPC) addresses the problem of removing one of the main drawbacks ...
Due to the ability to handle constraints systematically and predict system evolution with models, mo...
The benefits of applying the range of technologies generally known as Model Predictive Control (MPC)...
Model Predictive Control (MPC) is used to solve challenging multivariable-constrained control proble...
The control of multi-input multi-output (MIMO) systems is a common problem in practical control scen...
Modern day industrial processes are becoming ever more complex and require a method that is computat...
This project thesis provides a brief overview of Model Predictive Control (MPC).A brief history of i...
Process control in industries is becoming more critical due to demands on reducing consumed energy, ...
A significantly important part of model predictive control (MPC) with constraints is a solution of a...
Nowadays, optimality is a major concern in modern controlled systems, and since optimality generally...
Model predictive control (MPC) has demonstrated exceptional success for the high-performance control...
Model Predictive control (MPC) is shown to be particularly effective for the self-tuning control of ...
ne of the fundamental difficulties en-countered throughout process con-trol is the presence of time ...
Non-minimum phase Multi-input Multi-Ouput (MIMO) systems are known to be difficult to control. Model...
Teaching multivariable control usually involves a certain level of mathematical sophistication and h...
Explicit model predictive control (MPC) addresses the problem of removing one of the main drawbacks ...
Due to the ability to handle constraints systematically and predict system evolution with models, mo...