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Density prediction for petroleum and derivatives by gamma-ray attenuation and artificial neural networks. | LitMetric

Density prediction for petroleum and derivatives by gamma-ray attenuation and artificial neural networks.

Appl Radiat Isot

Instituto de Engenharia Nuclear, CNEN/IEN, P.O. Box 68550, 21945-970 Rio de Janeiro, Brazil. Electronic address:

Published: October 2016

AI Article Synopsis

  • This work introduces a new method for predicting the density of petroleum products, using an artificial neural network for pattern recognition.
  • The detection system employs a (137)Cs gamma-ray source and a NaI(Tl) detector to measure density through a broad beam geometry setup.
  • The methodology was validated through 88 simulations, covering a range of densities, demonstrating its capability to automatically predict material density without needing prior knowledge of the material's composition.

Article Abstract

This work presents a new methodology for density prediction of petroleum and derivatives for products' monitoring application. The approach is based on pulse height distribution pattern recognition by means of an artificial neural network (ANN). The detection system uses appropriate broad beam geometry, comprised of a (137)Cs gamma-ray source and a NaI(Tl) detector diametrically positioned on the other side of the pipe in order measure the transmitted beam. Theoretical models for different materials have been developed using MCNP-X code, which was also used to provide training, test and validation data for the ANN. 88 simulations have been carried out, with density ranging from 0.55 to 1.26gcm(-3) in order to cover the most practical situations. Validation tests have included different patterns from those used in the ANN training phase. The results show that the proposed approach may be successfully applied for prediction of density for these types of materials. The density can be automatically predicted without a prior knowledge of the actual material composition.

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Source
http://dx.doi.org/10.1016/j.apradiso.2016.08.001DOI Listing

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