|
Showing 1 - 3 of
3 matches in All Departments
A predictive control algorithm uses a model of the controlled
system to predict the system behavior for various input scenarios
and determines the most appropriate inputs accordingly. Predictive
controllers are suitable for a wide range of systems; therefore,
their advantages are especially evident when dealing with
relatively complex systems, such as nonlinear, constrained, hybrid,
multivariate systems etc. However, designing a predictive control
strategy for a complex system is generally a difficult task,
because all relevant dynamical phenomena have to be considered.
Establishing a suitable model of the system is an essential part of
predictive control design. Classic modeling and identification
approaches based on linear-systems theory are generally
inappropriate for complex systems; hence, models that are able to
appropriately consider complex dynamical properties have to be
employed in a predictive control algorithm. This book first
introduces some modeling frameworks, which can encompass the most
frequently encountered complex dynamical phenomena and are
practically applicable in the proposed predictive control
approaches. Furthermore, unsupervised learning methods that can be
used for complex-system identification are treated. Finally,
several useful predictive control algorithms for complex systems
are proposed and their particular advantages and drawbacks are
discussed. The presented modeling, identification and control
approaches are complemented by illustrative examples. The book is
aimed towards researches and postgraduate students interested in
modeling, identification and control, as well as towards control
engineers needing practically usable advanced control methods for
complex systems.
This dictionary contains terms from the fields of automatic
control, which includes mathematical modelling, simulation of
dynamic systems, automation technology with its corresponding
elements, and robotics. It also includes signal processing,
information technologies and production technologies. The
terminological dictionary is primarily aimed at experts and
students who deal with control technology and dynamic systems in
both technical and non-technical domains. To be able to use the
dictionary, at least basic knowledge in this field is required. In
the dictionary users will find concise terminological definitions.
A given concept may be expressed by different terms; therefore,
cross-references are used. The aim of the dictionary is to collect
and unify – at least to an achievable extent – the terminology
in the field of automatic control, dynamic systems and robotics.
A predictive control algorithm uses a model of the controlled
system to predict the system behavior for various input scenarios
and determines the most appropriate inputs accordingly. Predictive
controllers are suitable for a wide range of systems; therefore,
their advantages are especially evident when dealing with
relatively complex systems, such as nonlinear, constrained, hybrid,
multivariate systems etc. However, designing a predictive control
strategy for a complex system is generally a difficult task,
because all relevant dynamical phenomena have to be considered.
Establishing a suitable model of the system is an essential part of
predictive control design. Classic modeling and identification
approaches based on linear-systems theory are generally
inappropriate for complex systems; hence, models that are able to
appropriately consider complex dynamical properties have to be
employed in a predictive control algorithm. This book first
introduces some modeling frameworks, which can encompass the most
frequently encountered complex dynamical phenomena and are
practically applicable in the proposed predictive control
approaches. Furthermore, unsupervised learning methods that can be
used for complex-system identification are treated. Finally,
several useful predictive control algorithms for complex systems
are proposed and their particular advantages and drawbacks are
discussed. The presented modeling, identification and control
approaches are complemented by illustrative examples. The book is
aimed towards researches and postgraduate students interested in
modeling, identification and control, as well as towards control
engineers needing practically usable advanced control methods for
complex systems.
|
You may like...
Loot
Nadine Gordimer
Paperback
(2)
R205
R168
Discovery Miles 1 680
Loot
Nadine Gordimer
Paperback
(2)
R205
R168
Discovery Miles 1 680
|