Title of article :
Long-term prediction of the crude oil price using a new particle swarm optimization algorithm
Author/Authors :
JAMADI, FARNAZ Department of Physics - Sirjan University of Technology - Sirjan - Iran , SALAHSHOOR MOTTAGHI, ZAHRA Department of Computer Engineering - Faculty of Engineering - University of Guilan - Rasht - Iran , MAHMOODABADI, MOHAMMAD JAVAD Department of Mechanical Engineering - Sirjan University of Technology - Sirjan - Iran , ZOHARI, TAIEBEH Department of Mechanical Engineering - University of Politecnico di Milano - Milan - Italy , BAGHERI, AHMAD Department of Mechanical Engineering - Faculty of Engineering - University of Guilan - Rasht - Iran
Abstract :
Oil is one of the most precious source of energy for the world and has an important role in the global
economy. Therefore, the long-term prediction of the crude oil price is an important issue in economy and
industry especially in recent years. The purpose of this paper is introducing a new Particle Swarm Optimization (PSO) algorithm to forecast the oil prices. Indeed, the PSO is a population-based optimization
method inspired by the flocking behavior of birds. Its original version suffers from tripping in local minima. Here, the PSO is enhanced utilizing a convergence operator, an adaptive inertia weight and linear
acceleration coefficients. The numerical results of mathematical test functions, obtained by the proposed
algorithm and other variants of the PSO elucidate that this new approach operates competently in terms
of the convergence speed, global optimality and solution accuracy. Furthermore, the effective variables
on the long-term crude oil price are regarded and utilized as input data to the algorithm. The objective
function of the optimization process considered in this research study is the summation of the square of
the difference between the actual and the predicted oil prices. Finally, the long-term crude oil prices are
accurately forecasted by the proposed strategy which proves its reliability and competence. © 2020 Journal
of Energy Management and Technology
keywords: Particle swarm optimization, Long-term prediction, Crude oil price, Mathematical test functions.
Keywords :
Particle swarm optimization , Long-term prediction , Crude oil price , Mathematical test functions.
Journal title :
Journal of Energy Management and Technology