This paper describes how to use Genetic Programming (GP) as an evolutionary computational that is a family of algorithms for global optimization. GP, as a global optimization technique used by discovery of a new function for modeling physical phenomena. The p-p interactions are modeled at Large Hadron Collider (LHC) experiments, the number of charged particles multiplicity >n< and the total cross-section, σT, as functions of the total center of mass energy (from low to ultra-high energy), √s are discovered by using GP. In view of the discovered function for >n< (√s), the overall trend of the values predicted is consistent with LHC data [predicted values are 34.8638 and 35.3520 at √s = 13 TeV and √s = 14 TeV respectively]. The new function σT (√s) trained on experimental data of Particle Data Group (PDG) demonstrates a nice match to the other models. The predicted values of the total cross section at √ s = 13 TeV, and 14 TeV are found to be 109.0381 mb and 111.8329 mb respectively. Furthermore, the values predicted are agreed with other models like Block.
|Journal||Journal of Physics: Conference Series|
|Publication status||Published - Oct 21 2019|
|Event||1st Sharjah International Conference on Particle Physics, Astrophysics and Cosmology, FISICPAC 2018 - Sharjah, United Arab Emirates|
Duration: Nov 11 2018 → Nov 13 2018
ASJC Scopus subject areas
- Physics and Astronomy(all)