NUKLEONIKA 2012, 57(3):345-349

 


VOID FRACTION AND FLOW REGIME DETERMINATION BY MEANS
OF MCNP CODE AND NEURAL NETWORK



Ali Rabiei1, Mojtaba Shamsaei1, Mahdi Kafaee1, Mostafa Shafaei2, Naser Mahdavi1

1 Physics Department, Amirkabir University of Technology, Tehran, Iran
2 Department of Nuclear Engineering, Science and Research Branch,
Islamic Azad University, Tehran, Iran



One of the non-intrusive and accurate methods of measuring void fraction in two-phase gas liquid pipe flows is the use of the gamma-transmission void fraction measurement technique. The goal of this study is to describe low-energy gamma-ray densitometry using an 241Am source for the determination of void fraction and flow regime in water/gas pipes. The MCNP code was utilized to simulate electron and photon transport through materials with various geometries. Then, a neural network was used to convert multi-beam gamma-ray spectra into a classification of the flow regime and void fraction. The simulations cover the full range of void fraction with Bubbly, Annular and Droplet flows. By using simulation data as input to the neural networks, the void fraction was determined with an error less than 3% regardless of the flow regime. It has thus been shown that multi-beam gamma-ray densitometers with a detector response examined by neural networks can analyze a two-phase flow with high accuracy.


Close X