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3.3. Black-boxModeling
is the backward error propagation which computes the local gradient
of each node from the output layer to the input layer. After these two
roundsofcalculations,allweightscanbeupdated. Intuitively, thefor-
wardpassprovidesnecessaryinformationfor thebackwardpass,and
the backward pass calculates how much of the final output error be-
longs to each individual weights, which will be updated accordingly.
The backpropagation algorithm reduces the overall computation cost
significantly and promotes the development of neural networks a big
stepforward.
Based on the standard online SGBP algorithm, additional strategies
havetobetakentoreducetheeffectof”catastrophic interference”. As
stated in [Fre99], there are several possible strategies, by either using
noise-freetrainingdata,applyingmoreconstructivenetworkarchitec-
tures or adding extra information storage besides pure weights of the
network. Thefirst twoapproachesaredifficult to implement inrealis-
ticapplications, thereforemostpracticalonlinelearningalgorithmsgo
to the thirddirection, suchas the followingthreealgorithms.
• BPM is also named as enhanced backpropagation [Roj96], which
involves the momentum term in the weight update expression,
suchas
∆w(q) =−η ∂JOL
∂w ∣∣∣∣
k +α∆w(q−1), (3.88)
whereα is a tuning factor indicating the influence from the mo-
mentum. The involvement of momentum brings information and
influences from past training date pairs, which effectively attenu-
ate weight oscillations during the iteration process and improves
theestimationstability.
• This idea of using EKF in neural networks learning was firstly ap-
pliedin[SW89]andquicklybecameapowerfulandefficient learn-
ing algorithm, especially in incremental learning mode [KV92]
[RRK+92] [WVDM00]. The update equations using EKF in NN
trainingissimilarwiththeproceduresdescribedinformernonlin-
ear system identification (equations 3.67 and 3.68), and the corre-
spondingderivationprocesscanalsobe foundin[TP08].
• Sliding window based backpropagation [CMA94] is a way to use
batch learning mode in a online form. Instead of using the entire
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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