Title of article :
Design, Development and Test of a Practical Train Energy Optimization using GAPSO Algorithm
Author/Authors :
Khadem Hoseini Gohardani, Narges School of Railway Engineering - Iran University of Science and Technology, Tehran, Iran , Mirabadi, Ahmad School of Railway Engineering - Iran University of Science and Technology, Tehran, Iran , Yousefi, Shahin School of Railway Engineering - Iran University of Science and Technology, Tehran, Iran , Mostaghim, Pedram School of Railway Engineering - Iran University of Science and Technology, Tehran, Iran , Nasr, Asghar School of Railway Engineering - Iran University of Science and Technology, Tehran, Iran
Abstract :
One of the strategies for reduction of energy consumption in railway
systems is to execute efficient driving by presenting optimized speed
profile considering running time, energy consumption and practical
constraints. In this paper, by using real route data, an approach based on
combination of Genetic and Particle swarm (GA-PSO) algorithms in order
to optimize the fuel consumption is provided. The model of train takes into
account the length and mass of train, running resistance, tractive effort
curves for each notch, signaling system, variations of the motor efficiency
with respect to speed and effort ratio, auxiliary equipment consumption
and rotary inertia. The route characteristics included in the model are speed
limits, gradients, gradient transitions (and its effect along the train) and
curves. GA-PSO algorithm combining the benefits of both the original
algorithms GA and PSO is validated by formulating the optimization
problem. The GA-PSO performance is evaluated by comparing it with a
GA algorithm. Further, it is used for obtaining the optimal speed profiles
for a locomotive equipped with a GT26CW engine on Tehran-
Tappe_sefid block.
Keywords :
Optimal speed profile , Tractive effort minimization , GA-PSO algorithm , Genetic algorithm , PSO algorithm
Journal title :
Astroparticle Physics