This article is concerned with learning and stochastic control in physical systems which contain unknown input signals. These unknown signals are modeled as Gaussian processes (GP) with certain parametrized covariance structures. The resulting latent force models (LFMs) can be seen as hybrid models that contain a first-principles physical model part and a non-parametric GP model part. We briefly review the statistical inference and learning methods for this kind of models, introduce stochastic control methodology for the models, and provide new theoretical observability and controllability results for them
Autonomous learning has been a promising direction in control and robotics for more than a decade si...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
An important issue in model-based control design is that an accurate dynamic model of the system is ...
© 1963-2012 IEEE. This paper is concerned with learning and stochastic control in physical systems t...
Building physics-based models of complex physical systems like buildings and chemical plants is extr...
Purely data-driven approaches for machine learning present difficulties when data are scarce relativ...
Purely data-driven approaches for machine learning present difficulties when data are scarce relativ...
This paper attempts to bridge the gap between standard engineering practice and machine learning whe...
Autonomous learning has been a promising direction in control and robotics for more than a decade si...
Nowadays, machine learning (ML) methods rapidly evolve for their use in model-based control applicat...
Model predictive control is a popular control approach for multivariable systems with important proc...
Systems and Control deals with modelling and control design of many different types of systems with ...
This book examines Gaussian processes in both model-based reinforcement learning (RL) and inference ...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
Autonomous learning has been a promising direction in control and robotics for more than a decade si...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
An important issue in model-based control design is that an accurate dynamic model of the system is ...
© 1963-2012 IEEE. This paper is concerned with learning and stochastic control in physical systems t...
Building physics-based models of complex physical systems like buildings and chemical plants is extr...
Purely data-driven approaches for machine learning present difficulties when data are scarce relativ...
Purely data-driven approaches for machine learning present difficulties when data are scarce relativ...
This paper attempts to bridge the gap between standard engineering practice and machine learning whe...
Autonomous learning has been a promising direction in control and robotics for more than a decade si...
Nowadays, machine learning (ML) methods rapidly evolve for their use in model-based control applicat...
Model predictive control is a popular control approach for multivariable systems with important proc...
Systems and Control deals with modelling and control design of many different types of systems with ...
This book examines Gaussian processes in both model-based reinforcement learning (RL) and inference ...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
Autonomous learning has been a promising direction in control and robotics for more than a decade si...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
An important issue in model-based control design is that an accurate dynamic model of the system is ...