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Issue Info: 
  • Year: 

    2009
  • Volume: 

    9
  • Issue: 

    4
  • Pages: 

    378-383
Measures: 
  • Citations: 

    1
  • Views: 

    262
  • Downloads: 

    0
Keywords: 
Abstract: 

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Issue Info: 
  • Year: 

    2009
  • Volume: 

    11
  • Issue: 

    2
  • Pages: 

    147-160
Measures: 
  • Citations: 

    0
  • Views: 

    433
  • Downloads: 

    268
Abstract: 

The use of neural networks methodology is not as common in the investigation and prediction noise as statistical analysis. The application of artificial neural networks for prediction of power tiller noise is set out in the present paper. The sound pressure signals for noise analysis were obtained in a field experiment using a 13-hp power tiller. During measurement and recording of the sound pressure signals of the power tiller, the engine speeds and gear ratios were varied to cover the most normal range of the power tiller operation in transportation conditions for the asphalt, dirt rural roads, and grassland. Signals recorded in the time domain were converted to the frequency domain with the help of a specially developed Fast Fourier Transform (FFT) program. The narrow band signals were further processed to obtain overall sound pressure levels in A-weighting. Altogether, 48 patterns were generated for training and evaluation of artificial neural networks. Artificial neural networks were designed based on three neurons in the input layer and one neuron in the output layer. The results showed that multi layer perceptron networks with a training ALGORITHM of BACK PROPAGATION were best for accurate prediction of power tiller overall noise. The minimum RMSE and R2 for the four-layer perceptron network with a sigmoid activation function, Extended Delta-Bar-Delta (Ext. DBD) learning rule with three neurons in the first hidden layer and two neurons in the second hidden layer, were 0.0198 and 0.992, respectively.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Issue Info: 
  • Year: 

    2016
  • Volume: 

    4
  • Issue: 

    1
  • Pages: 

    49-54
Measures: 
  • Citations: 

    1
  • Views: 

    1867
  • Downloads: 

    326
Abstract: 

uspended particles have deleterious effects on human health and one of the reasons why Tehran is effected is its geographically location of air pollution. One of the most important ways to reduce air pollution is to predict the concentration of pollutants. This paper proposed a hybrid method to predict the air pollution in Tehran based on particulate matter less than 10 microns (PM10), and the information and data of Aghdasiyeh Weather Quality Control Station and Mehrabad Weather Station from 2007 to 2013. Generally, 11 inputs have been inserted to the model, to predict the daily concentration of PM10. For this purpose, Artificial Neural Network with BACK PROPAGATION (BP) with a middle layer and sigmoid activation function and its hybrid with Genetic ALGORITHM (BP-GA) were used and ultimately the performance of the proposed method was compared with basic Artificial Neural Networks along with (BP) Based on the criteria of - R2-, RMSE and MAE. The finding shows that BP-GA R2 = 0.54889 has higher accuracy and performance. In addition, it was also found that the results are more accurate for shorter time periods and this is because the large fluctuation of data in long-term returns negative effect on network performance. Also, unregistered data have negative effect on predictions. Microsoft Excel and Matlab 2013 conducted the simulations.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

BEYGI H. | MEYBODI M.R.

Journal: 

Scientia Iranica

Issue Info: 
  • Year: 

    2001
  • Volume: 

    8
  • Issue: 

    4 (COMPUTER ENGINEERING)
  • Pages: 

    250-264
Measures: 
  • Citations: 

    0
  • Views: 

    333
  • Downloads: 

    253
Keywords: 
Abstract: 

BACK PROPAGATION (BP) ALGORITHM is a systematic method for training multi-layerneural networks, which, despite many successful applications. also has many drawBACKs. For complex problems, BACK PROPAGATION may requie a long time to train the networks and it is possible that no training occurs at all. Long train in time can be the result of non-optimal parameters. It is not easy to choose an appropriate value for the parameters of a particular problem and the parameters are usually determined by rail and error. If the parameters are not chosen appropriately, slow convergence paralysis and continuous instability can result [1-4]. Moreover, the best values for the parameters at the beginning of training may not be good enough later. In this paper A technique has been incorp rated into BP ALGORITHM for adaptation of steepness parameter and momentum factor in order to achieve a higher rate of convergence. Through interconnection of Fixed Structure Learn in Automata (FSLA) to the feed forward neural networks. Learning automata scheme is applied in order to adjust these parameters based on the observation of random response of neural networks. The main motivation in using learning automata as an adaptation ALGORITHM is in is capability of global optimization when dealing with multi-modal surfaces. The feasibility of he proposed method is shown through simulations on three learning problems: exclusive-or encoding problem and digit recognition. These problems are chosen because they have different error surfaces and collectively present an environment that is suitable to determine the effect of the proposed method. The simulation results show that the adaptation of these parameters using his method increases not only the convergence rate of learning but also the likelihood of escaping the local minima. Computer simulations provided in this paper indicate that at least a magnitude of savings in running time can be achieved when FSLA is used for the adaptation of momentum factor and steepness parameters. Furthermore simulations demonstrate that the FSLA approach performs much better than the Variable Structure Learning Automata (VSLA) approach reported in [1,2].

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

RAMASUNDRAM S.

Issue Info: 
  • Year: 

    2010
  • Volume: 

    8
  • Issue: 

    6
  • Pages: 

    1-5
Measures: 
  • Citations: 

    1
  • Views: 

    213
  • Downloads: 

    0
Keywords: 
Abstract: 

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Issue Info: 
  • Year: 

    2004
  • Volume: 

    15
  • Issue: 

    4
  • Pages: 

    65-72
Measures: 
  • Citations: 

    0
  • Views: 

    288
  • Downloads: 

    0
Abstract: 

The concept of BACK wave PROPAGATION is developed as an inversion method to estimate acoustic parameters of the tissue and material from measurements of the acoustic field for a known source-receiver. A phase-regulated technique is introduced to measure the sensitivity of the BACK-wave PROPAGATION inversion method for estimating weakly sensitive acoustic model parameters. The paper demonstrates theoretically that the sensitivity can be measured by a sensitivity factor using the phase-regulation procedure. The paper also demonstrates that the spatial resolution of BACK propagated signal energy that is focused at the known source location is increased when sensitivity factor increases. This result leads to the definition of a criterion based on the spatial distribution of the signal energy around the source location. The criterion is formulated based on the spatial variance of the BACK propagated pressure field in a windows around the known source location. Use of the BACK wave PROPAGATION inversion method is demonstrated for estimating the acoustic model parameters, including type of materials, tissues, water depth, compressional speed of the sediment layer, and mineral density as poro-elastic media.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

LIN S. | TSENG T. | LIN H.

Issue Info: 
  • Year: 

    2006
  • Volume: 

    4
  • Issue: 

    -
  • Pages: 

    0-0
Measures: 
  • Citations: 

    1
  • Views: 

    134
  • Downloads: 

    0
Keywords: 
Abstract: 

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

CHOWDARY B.V.

Issue Info: 
  • Year: 

    2007
  • Volume: 

    18
  • Issue: 

    3
  • Pages: 

    315-332
Measures: 
  • Citations: 

    1
  • Views: 

    161
  • Downloads: 

    0
Keywords: 
Abstract: 

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Journal: 

PETROLEUM RESEARCH

Issue Info: 
  • Year: 

    2010
  • Volume: 

    20
  • Issue: 

    61
  • Pages: 

    48-57
Measures: 
  • Citations: 

    0
  • Views: 

    1165
  • Downloads: 

    0
Abstract: 

Determination of different facies is one of the most important and fundamental tasks of geological arid engineering characterization of reservoir rocks. The neural network method is one of the new techniques used in identification of facies. The objective of the present study was to identify and measure different facies of Southern Pars gas and oil fields (Iran) using BACK-PROPAGATION neural networks in order to develop static and dynamic models. Modeling was carried out using three different techniques. Also network parameters were optimized in order to improve the network performance including number of layers and neurons, transfer function, training ALGORITHM, dividing and performance functions. The results indicate that the BACK-PROPAGATION neural network is a powerful method for identification and modeling of the facies.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

HEIDARI A.

Issue Info: 
  • Year: 

    2011
  • Volume: 

    12
  • Issue: 

    3
  • Pages: 

    267-278
Measures: 
  • Citations: 

    0
  • Views: 

    372
  • Downloads: 

    135
Abstract: 

A method is used to obtain the fundamental frequency of a retaining wall quite accurately and carry out a dynamic analysis of such wall based on modal response technique. The present procedure establishes both the general and particular cases of dynamic response of retaining wall based on improved Rayleigh-Ritz method. The wall will be assumed to be a flexural member. The fundamental frequency of the retaining wall with soil mass has been computed. The results based on proposed method are then used to BACK PROPAGATION neural network (BPN). In the present work, the fundamental frequency of a retaining wall is calculated by BPN. A significant benefit of BPN is its ability to learn relationships between variables with repeated exposure to those variables. Therefore, instead of deriving an analytical relationship from mathematical formulations, the BPN learns the relationship through an adaptive training process. Numerical example shows the merit of the BPN.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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