Multivariable intermittent control (MIC) combines stability with flexibility in the control of unstable systems. Using an underlying continuous-time optimal control design, MIC uses models of the physical system to generate multivariate open-loop control signals between samples of the observed state. Using accurate model values of physical system parameters, stability of the closed loop system is not dependent upon sample interval. Here we consider the sensitivity of MIC to inaccurate model values of system parameters. The high dimensionality of multiple parameters combined with an unstable open loop system ensures the ratio of hyper-volumes containing good to bad parameter combinations resembles a “needle in a haystack”. Is this sensitivit...
The problem of the synthesis of multivariable controllers which are robust with respect to model-pla...
An intermittent controller with fixed sampling interval is recast as an event-driven controller. The...
The estimation of unmeasured state and parameters for complex systems is of great importance for app...
Multivariable intermittent control (MIC) combines stability with flexibility in the control of unsta...
Multivariable intermittent control (MIC) combines stability with flexibility in the control of unsta...
© 2015 IEEE.A sensorimotor architecture inspired from biological, vertebrate control should (i) expl...
Abstract: Multivariable system models in the form of parameterized, impedance, matrix quadratic real...
We propose a continuous-time model predictive control (MPC) strategy in the presence of intermittent...
Measured disturbances are often included in model predictive control (MPC) formulations to obtain be...
<p>The intermittent predictive controller is based on continuous control as a special case <a href="...
Intermittent control, where a sequence of open-loop trajectories is punctuated by intermittent feedb...
The paradigm of continuous control using internal models has advanced understanding of human motor c...
This study addresses to the robustness of model predictive control in the presence of the mismatched...
Controller design for continuous and discrete multivaruable systems whose models are unknown or high...
Experiments indicate the applicability and potential of adaptive systems for chemical process contro...
The problem of the synthesis of multivariable controllers which are robust with respect to model-pla...
An intermittent controller with fixed sampling interval is recast as an event-driven controller. The...
The estimation of unmeasured state and parameters for complex systems is of great importance for app...
Multivariable intermittent control (MIC) combines stability with flexibility in the control of unsta...
Multivariable intermittent control (MIC) combines stability with flexibility in the control of unsta...
© 2015 IEEE.A sensorimotor architecture inspired from biological, vertebrate control should (i) expl...
Abstract: Multivariable system models in the form of parameterized, impedance, matrix quadratic real...
We propose a continuous-time model predictive control (MPC) strategy in the presence of intermittent...
Measured disturbances are often included in model predictive control (MPC) formulations to obtain be...
<p>The intermittent predictive controller is based on continuous control as a special case <a href="...
Intermittent control, where a sequence of open-loop trajectories is punctuated by intermittent feedb...
The paradigm of continuous control using internal models has advanced understanding of human motor c...
This study addresses to the robustness of model predictive control in the presence of the mismatched...
Controller design for continuous and discrete multivaruable systems whose models are unknown or high...
Experiments indicate the applicability and potential of adaptive systems for chemical process contro...
The problem of the synthesis of multivariable controllers which are robust with respect to model-pla...
An intermittent controller with fixed sampling interval is recast as an event-driven controller. The...
The estimation of unmeasured state and parameters for complex systems is of great importance for app...