Seite - 90 - in Adaptive and Intelligent Temperature Control of Microwave Heating Systems with Multiple Sources
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4. ControlSystemDesign
LinearMPC
Inthissection,proceduresofhowthecontrolsolutionisderivedinthe
linearMPCsystemispresented. LinearMPCachievesgreatsuccesses
in a number of applications, e.g. in [QB03] and [MHL99]. By now,
the linear MPC theory is widely implemented, and over 90% of MPC
applications are linear. Various linear MPC algorithms exist, includ-
ing the dynamic matrix control (DMC) [Wan09], predictive functional
control (PFC) [HBS11], model algorithmic control (MAC) [GPM89],
and generalized predictive control (GPC) [CMT87]. Among these
different algorithms, DMC is one of the most powerful and widely
implemented MPC algorithms, especially in industry. According to
the investigation in [OOH95], all major oil companies apply DMC-
like approaches to control process variables such as the temperature
and pressure in their new installations or revamps. Compared with
other MPC approaches like GPC, DMC is more suitable for multivari-
able state-space formed systems as well as ARX types of models. In
order to further involve the control input constraints, an improved
version of DMC - quadratic DMC (QDMC) [GM86] algorithm is ap-
plied.
The time-invariant QDMC algorithm is not designed to deal with
time-varying systems (such as equation 4.7), but still it is rational to
be implementedhere. Thisalgorithmissuitablebecause thecurrently
estimated system model (at time k) can predict the future behavior
(until time k+p) accurately. In microwave heating applications, the
system model parameters are changing slowly, especially when the
temperatureof the loadisvaryingwithinasmall range(whenthetar-
get temperature is fixed). As long as the current system parameters
areestimatedaccurately, it is reasonable toassumethat thecurrentes-
timated parameters can be used to predict future outputs with a high
accuracy. For instance, it has been demonstrated in [NP97] that the
time-invariant MPC approach can keep a suboptimal performance in
practical time-varying applications. On the other hand, although a
number of MPC approaches have been proposed specialized for spe-
cific time-varying systems, such as the approaches in [DC03] [ZL03]
and [Ric05], the performance gain of these approaches over conven-
tional time-invariant MPC approaches is limited. In this thesis, the
time-invariantQDMCalgorithmisselected.
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Adaptive and Intelligent Temperature Control of Microwave Heating Systems with Multiple Sources
- Titel
- Adaptive and Intelligent Temperature Control of Microwave Heating Systems with Multiple Sources
- Autor
- Yiming Sun
- Verlag
- KIT Scientific Publishing
- Ort
- Karlsruhe
- Datum
- 2016
- Sprache
- englisch
- Lizenz
- CC BY-SA 3.0
- ISBN
- 978-3-7315-0467-2
- Abmessungen
- 14.8 x 21.0 cm
- Seiten
- 260
- Schlagwörter
- Mikrowellenerwärmung, Mehrgrößenregelung, Modellprädiktive Regelung, Künstliches neuronales Netz, Bestärkendes Lernenmicrowave heating, multiple-input multiple-output (MIMO), model predictive control (MPC), neural network, reinforcement learning
- Kategorie
- Technik