scholarly journals Digital Implementation of Artificial Neural Network for Function Approximation and Pressure Control Applications

2013 ◽  
Vol 5 (5) ◽  
pp. 34-39
Author(s):  
Sangeetha T Sangeetha T
2007 ◽  
Vol 4 (1) ◽  
pp. 29-45 ◽  
Author(s):  
Eija Koskivaara ◽  
Barbro Back

This paper presents the development and applications of ANNA—Artificial Neural Network Assistant (ANNA) for continuous auditing and monitoring of financial data. The prototype presented here provides automatically six types of expectation values for account values and compares them to the actual values. In this study, ANNA is used for analyzing monthly account values. ANNA's predictions or account expectations are based on function approximation (modeling) capability from the previous years' monthly account values. ANNA uses a flexible one-step-ahead prediction model. The results are illustrated both by a graph on the computer screen and in the tables. The evaluation of results show that artificial neural networks technology is competitive compared to other methods used in this study.


2007 ◽  
Vol 19 (9) ◽  
pp. 2433-2467 ◽  
Author(s):  
Judith E. Dayhoff

We demonstrate a model in which synchronously firing ensembles of neurons are networked to produce computational results. Each ensemble is a group of biological integrate-and-fire spiking neurons, with probabilistic interconnections between groups. An analogy is drawn in which each individual processing unit of an artificial neural network corresponds to a neuronal group in a biological model. The activation value of a unit in the artificial neural network corresponds to the fraction of active neurons, synchronously firing, in a biological neuronal group. Weights of the artificial neural network correspond to the product of the interconnection density between groups, the group size of the presynaptic group, and the postsynaptic potential heights in the synchronous group model. All three of these parameters can modulate connection strengths between neuronal groups in the synchronous group models. We give an example of nonlinear classification (XOR) and a function approximation example in which the capability of the artificial neural network can be captured by a neural network model with biological integrate-and-fire neurons configured as a network of synchronously firing ensembles of such neurons. We point out that the general function approximation capability proven for feedforward artificial neural networks appears to be approximated by networks of neuronal groups that fire in synchrony, where the groups comprise integrate-and-fire neurons. We discuss the advantages of this type of model for biological systems, its possible learning mechanisms, and the associated timing relationships.


Author(s):  
Dalia Mahmoud Adam Adam

This paper presents a study to design an artificial neural network for sound control in a pressure control system. Where the power of artificial neural networks has been exploited in the construction of a voice recognition for use within the control system in the pressure of pipes distribution of petroleum products. The paper presented an effective approach in designing the neural network for the best possible design performance.


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