High Energy Hadronic Collisions Using Neural Network and Genetic Programming Techniques
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Moussa:2013:IJAPM,
-
author = "Moaaz A. Moussa",
-
title = "High Energy Hadronic Collisions Using Neural Network
and Genetic Programming Techniques",
-
journal = "International Journal of Applied Physics and
Mathematics",
-
year = "2013",
-
volume = "3",
-
number = "2",
-
month = mar,
-
pages = "146--151",
-
keywords = "genetic algorithms, genetic programming, artificial
intelligence technique, hadronic collisions, machine
learning (ml), multiplicity distribution, neural
network, pion production",
-
publisher = "IACSIT Press",
-
ISSN = "2010-362X",
-
bibsource = "OAI-PMH server at www.doaj.org",
-
oai = "oai:doaj-articles:947928d4dd975f4d3d916615eb24f5f1",
-
broken = "http://www.ijapm.org/papers/195-PM2004.pdf",
-
DOI = "DOI:10.7763/IJAPM.2013.V3.195",
-
abstract = "Artificial Intelligence (AI) techniques of artificial
neural networks (ANN) and evolutionary computation of
genetic programming (GP) have recently been used to
design and implement more effective models. The
artificial neural network (ANN) model has been used to
study the charged particles multiplicity distributions
for antiproton-neutron ( p - n - ) and proton-neutron (
p - n) collisions at different lab momenta. The neural
network model performance was also tested at
non-trained space (predicted) and matched them
effectively. The trained NN shows a good fitting with
the available experimental data. The NN simulation
results prove a solid existence in modelling hadronic
collisions. Genetic Programming (GP) model is a
flexible and powerful technique that can be used for
solving the same problem. In this paper, genetic
programming (GP) has been used to discover a function
that calculates the charged particles multiplicity
distribution of created pions for the same interactions
at high energies. The predicted distributions from the
GP-based model are compared with the available
experimental data. The discovered function of GP model
has proved to be an excellent matching with the
corresponding experimental data",
- }
Genetic Programming entries for
Moaaz A Moussa
Citations