Title :
Characteristics Optimization of the Maglev Train Hybrid Suspension System Using Genetic Algorithm
Author :
Safaei, Farhad ; Suratgar, Amir Abolfazl ; Afshar, Ahmad ; Mirsalim, Mojtaba
Author_Institution :
Dept. of Electr. Eng., Amirkabir Univ. of Technol., Tehran, Iran
Abstract :
This paper focuses on the optimal structural design of a hybrid permanent-magnet-electro-magnetic suspension system (PEMS) for a magnetic levitation (Maglev) transportation system in order to decrease the suspension power loss. First, the nonlinear magnetic force expression of a PEMS system is obtained by developing the magnetic equivalent circuit of the hybrid structure. The proposed analytical framework accounts for leakage fluxes and material properties such as iron reluctances. A number of design considerations are also presented to attain more practical results. Genetic algorithm is then employed to optimize the lifting force while reducing the system power loss. Moreover, 3-D finite element method (FEM) is utilized in the analyses and it is shown that the results calculated from the proposed model match well with those obtained from FEM. In addition, superiorities of the implemented model over the existing approaches are demonstrated. The outcomes show that the proposed method has increased the magnetic force, while significantly reducing the suspension power loss compared with those in the conventional pure electromagnet structure and in a previously proposed hybrid structure.
Keywords :
electromagnets; equivalent circuits; finite element analysis; genetic algorithms; magnetic fluids; magnetic forces; magnetic levitation; permanent magnets; transportation; 3D finite element method; PEMS; characteristics optimization; electromagnet structure; genetic algorithm; hybrid permanent-magnet-electro-magnetic suspension system; iron reluctances; leakage flux; maglev train hybrid suspension system; magnetic equivalent circuit; magnetic levitation; material properties; nonlinear magnetic force expression; optimal structural design; suspension power loss; transportation system; Genetic algorithms; Iron; Magnetic circuits; Magnetic forces; Magnetic levitation; Optimization; Saturation magnetization; Finite-element-method; Maglev train; genetic algorithm optimization; hybrid magnetic levitation; modeling; permanent-magnet (PM); permanent-magnet-electro-magnetic;
Journal_Title :
Energy Conversion, IEEE Transactions on
DOI :
10.1109/TEC.2014.2388155