Development of a hybrid fuzzy genetic algorithm model for solving transportation scheduling problem
Caprara, A.(2015). Timetabling and assignment problems in railway planning and integer multicommodity flow. Networks, 66: 1-10.
Chang, YH, Yeh, CH. & Shen, CC. (2000). A multiobjective model for passenger train services planning: application to Taiwain’s high-speed rail line. Transportation Research Part B, 34: 91-106.
Della, Croce, F., Tadei, R. & Volta, G. (1995). A Genetic Algorithm for the Job Shop Problem. Computers & Operations Research, 22: 15-24.
Fay, A. (2000). A fuzzy knowledge-based system for railway traffic control. Engineering application of artificial intelligence, 13: 719-729.
He, S, Song, R. & Chaudhry, SS. (2000). Fuzzy dispatching model and genetic algorithms for railyards operations. European journal of operational research, 124 (2): 307-331.
Huang, ZP. & Niu, H. (2012). Study on the train operation optimization of passenger dedicated lines based on satisfaction. Discrete dynamics in nature and society, 2012: 1-11.
Huisman, D. & Kroon, LG. (2005). Operations research in passenger railway transportation. Statistica Neerlandica, 49(4):467-497.
Last, M., Eyal, S. (2005). A fuzzy-based lifetime extension of genetic algorithms. Fuzzy sets and systems, 149, 131-147.
Lau, H. C. W., Chan, T. M., Tsui, W. T., Ho, G. T. S. & Choy, K. L. (2009). An Ai Approach for Optimizing Multi-Pallet Loading Operations. Expert Systems with Applications, 36, 4296-4312.
Lau, H.C.W. & Dwight, R.A. (2011). A fuzzy-based decision support model for engineering asset condition monitoring – A case study of examination of water pipelines. Expert Systems with Application, 38 (10), 13342-13350.
Maiti, MK (2011). A fuzzy genetic algorithm with varying population size to solve an inventory model with credit-linked promotional demand in an imprecise planning horizon. European journal of operational research, 213: 96-106.
Niu, HM. (2011).Determination of the skip-station scheduling for a congested transit line by bilevel genetic algorithm. International journal of computational intelligence systems, 6(4): 1158-1167.
Peng, ZH, Song, B. (2010). Research on fault diagnosis method for transformer based on fuzzy genetic algorithm and artificial neural network. Kybernetes, 39(8): 1235-1244.
Schindl, D., Zufferey, N. (2015). A learning tabu search for a truck allocation problem with linear and nonlinear cost components. Naval Research Logistics , 62: 32-45.
Taleizadeh, AA, Niaki, STA, Aryanezhad, MB. & Shafii, N. (2013). A hybrid method of fuzzy simulation and genetic algorithm to optimize constrained inventory control systems with stochastic replenishments and fuzzy demand. Information sciences, 220: 425-441.
Vromans, MJCM. & Kroon, LG. (2004). Stochastic optimization of railway timetables, in: Proceedings TRAIL 8th Annual Congress, Delft University Press, Delft, 423– 445.
Zomaya, A.Y. (2001). Natural and simulated annealing. Computing in Science & Engineering, 3, 97-99.