2008
DOI: 10.1016/j.cam.2007.10.040
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Wavelets and Elman Neural Networks for monitoring environmental variables

Abstract: An application in cultural heritage is introduced. Wavelet decomposition and Neural Networks like virtual sensors are jointly used to simulate physical and chemical measurements in specific locations of a monument. Virtual sensors, suitably trained and tested, can substitute real sensors in monitoring the monument surface quality, while the real ones should be installed for a long time and at high costs. The application of the wavelet decomposition to the environmental data series allows getting the treatment … Show more

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Cited by 18 publications
(5 citation statements)
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“…Different from RBF, BP and other feedforward neural networks, besides the input layer, output layer and hidden layer, Elman network still has a feedback layer of which the node number is equal to that of the hidden layer. The feedback layer acts as one-step delay operator, and is used to memorize the output value of hidden nodes [26][27] . Compared to the BP network, it involves faster training and has a simpler structure and higher accuracy [27] .…”
Section: Arithmetic Of Elman Neural Networkmentioning
confidence: 99%
See 1 more Smart Citation
“…Different from RBF, BP and other feedforward neural networks, besides the input layer, output layer and hidden layer, Elman network still has a feedback layer of which the node number is equal to that of the hidden layer. The feedback layer acts as one-step delay operator, and is used to memorize the output value of hidden nodes [26][27] . Compared to the BP network, it involves faster training and has a simpler structure and higher accuracy [27] .…”
Section: Arithmetic Of Elman Neural Networkmentioning
confidence: 99%
“…The feedback layer acts as one-step delay operator, and is used to memorize the output value of hidden nodes [26][27] . Compared to the BP network, it involves faster training and has a simpler structure and higher accuracy [27] . The structure of Elman neural network is shown in Fig.…”
Section: Arithmetic Of Elman Neural Networkmentioning
confidence: 99%
“…The activation function for hidden layer is one of the key factors which directly impact on network performance. The wavelet neural network [8][9] has the linear distribution of weights and convex of learning objective function, which can avoid local optimal nonlinear optimization problem. So the combination of wavelet and OHIF Elman can form a compact wavelet OHIF Elman NN shown in Fig.1.…”
Section: Wavelet Ohif Elman Nn Model Structurementioning
confidence: 99%
“…In a recent study of sensor selection for machine olfaction design [36], discrete wavelet transformation not only significantly reduced the number of sensor variables but also yielded an almost 100% accuracy for the classification of two types of odor (coffee and soda). Wavelet transformation coupled with artificial neural networks was also successfully used for electronic tongue design [37] and environmental variable monitoring [38]. To ensure the feature extraction effect of wavelet analysis, a couple of things should be taken into account including wavelet type and decomposition level.…”
Section: Feature Extraction and Dimension Reductionmentioning
confidence: 99%