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5. ExperimentalResults
As mentioned in chapter 4, theQ(λ) based RLC is only tested in the
flat-temperature period. The setup 5.21 is used in these experiments
and the target temperature curve is the same as in figure 4.11. Be-
fore the controller is tested in real experiments, it was also tested in a
numberofsimulations. Thecontrol task inthesimulations isdifferent
to the task 4.30 mentioned in chapter 4 because there is no way to
simulate the whole temperature distribution. The same well-trained
NN used in the NNC simulations 5.31 is also used here. Instead of
the maximum and the minimum temperatures of the whole thermal
picture, the maximum and the minimum temperatures from the five
simulated temperatures are used as the controlled temperatures. Cor-
respondingly, the indexes of these two temperatures are considered
as the location states. For instance, T1 is the highest temperature is
equivalent to the idea that the hot spot is the region R1 (illustrated in
figure 4.13).
Thissimulationcanbeconsideredas thesimplifiedversionof thereal
control task. The purpose of this simulation is to test if all five tem-
peraturescanbelimitedwithinacertainrangebyonlycontrollingthe
maximum and the minimum temperatures. The corresponding simu-
lationresultsareshowninfigure 5.36. Theentiresimulationlasts9000
s, but the controller takes around 3000 s (3000 control periods) to re-
ducethetemperaturewindowfrommorethan10◦Ctoabout1◦C. This
result reflects that theQ(λ) RLC method is effective to affect all other
uncontrolled temperatures by only controlling the maximum and the
minimumtemperatures.
Based on this result, the hybrid control structure (figure 4.14) was
tested in realexperiments. The total controlledarea is slightly smaller
than the one shown in figure 4.13 to prevent any uncontrollable lo-
cations in the corners or edges. The corresponding control results are
showninfigure 5.37.
In the first trial 5.37a, the raising-temperature period is controlled by
using the linear MPC controller. In the flat-temperature period, the
temperature window between the maximum and minimum temper-
atures is not effectively reduced. Because theQ(λ) controller has to
learn the correct state-action values during the controlling and it also
has to take many exploration control actions. The exploration proba-
bility usedintheQ(λ)controllerdecreases from0.9 inthebeginning
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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