Applying Artificial Neural Network Hadron - Hadron Collisions at LHC
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چکیده
High Energy Physics (HEP) targeting on particle physics, searches for the fundamental par‐ ticles and forces which construct the world surrounding us and understands how our uni‐ verse works at its most fundamental level. Elementary particles of the Standard Model are gauge Bosons (force carriers) and Fermions which are classified into two groups: Leptons (i.e. Muons, Electrons, etc) and Quarks (Protons, Neutrons, etc).
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تاریخ انتشار 2013