- Aizawa, A.N. and Wan, B. W. (1993). Dynamic control of genetic algorithms in a noisy environment. In International Conference on Genetic Algorithms, pp. 48--55 Google ScholarDigital Library
- Arnold, D. V.; Beyer, H.-G. (2000). Efficiency and mutation strength adap- tation of the -ES in a noisy environment. In Parallel Problem Solving from Nature. LNCS 1917, Springer, pp. 39--48. Google ScholarDigital Library
- Ball, R.; Branke, J.; Meisel, S. (2017) Optimal Sampling for Simulated Annealing Under Noise. INFORMS Journal on Computing 30(1):200--215Google ScholarCross Ref
- Bartz-Beielstein, T.; Lasarczyk, C; Preuß, M. (2005) Sequential parameter optimization. In: McKay B., et al (eds) Congress on Evolutionary Computation, IEEE Press, vol 1, pp. 773--780Google Scholar
- Birattari, M.; Yuan, Z.; Balaprakash, P.; Stützle, T. (2010). F-Race and Iterated F-Race: An overview. In: Experimental Methods for the Analysis of Optimization Algorithms, pp. 311--336Google ScholarCross Ref
- Boesel, J.; Nelson, B. L; Kim, S.-H. (2003). Using ranking and selection to clean up after simulation optimization. Operations Research 51(5):814--825 Google ScholarDigital Library
- Branke, J. (2001) Reducing the sampling variance when searching for robust solutions, Genetic and Evolutionary Computation Conference, Morgan Kaufmann, pp. 235--242 Google ScholarDigital Library
- Branke, J. (2001). Evolutionary optimization in dynamic environments. Kluwer Google ScholarDigital Library
- Branke, J.; Chick, S.; Schmidt, C. (2007). Selecting a selection procedure. Management Science 53(12):1916--1932 Google ScholarDigital Library
- Branke, J.; Elomari, J. (2012). Meta-optimization for parameter tuning with a flexible computing budget. Genetic and Evolutionary Computation Conference, ACM, pp. 1245--1252 Google ScholarDigital Library
- Branke, J.; Funes, P.; Thiele, F. (2007). Evolving en-route caching strategies for the Internet. Applied Soft Computing Journal 7(3):890--898 Google ScholarDigital Library
- Branke, J.; Meisel, S.; Schmidt, C.(2008). Simulated annealing in the presence of noise. Journal of Heuristics 14:627--654 Google ScholarDigital Library
- Branke, J.; Asafuddoula, M.; Bhattacharjee, K.; Ray, T. (2017) Efficient Use of Partially Converged Simulations in Evolutionary Optimization, IEEE Transactions on Evolutionary Computation 21(1):52--64 Google ScholarDigital Library
- Chen, H.-C; Lee, L.-H. (2011). Stochastic simulation optimization: an optimal computing budget allocation. World Scientific Google ScholarDigital Library
- Chick, S; Branke, J; Schmidt, C.(2010). Sequential sampling to myopically maximize the expected value of information". Informs Journal on Computing 22(1):71--80 Google ScholarDigital Library
- Frazier, P.; Powell, W.; Dayanik, S.: The knowledge gradient policy for correlated normal beliefs. INFORMS Journal on Computing 21(4):599--613Google Scholar
- Fu, M. (2002): Optimization for simulation: Theory vs. practice. Informs Journal on Computing 14(3):192--215Google ScholarDigital Library
- Fu, M. (ed., 2015): Handbook of Simulation Optimization. Springer. Google ScholarDigital Library
- Hong, L.J.; Nelson, B.L. (2007). Selecting the best system when systems are revealed sequentially. IIE Transactions, 39:723--734Google ScholarCross Ref
- Huang, D.; Allen, TT; Notz, WI.; Zeng, N. (2006) Global optimization of stochastic black-box systems via sequential kriging meta-models. Journal of Global Optimization 34(3):441--466 Google ScholarDigital Library
- Jin, Y.; (2011) Surrogate-assisted evolutionary computation: Recent advances and future challenges. Swarm and Evolutionary Computation 1(2):61--70Google ScholarCross Ref
- Jin, Y.; Branke, J. (2005) Evolutionary optimization in uncertain environments - A survey. IEEE Transactions on Evolutionary Computation 9(3):303--318 Google ScholarDigital Library
- Jones, D. R.; Schonlau, M.; Welch, W. J. (1998). Efficient global optimization of expensive black-box functions. Journal of Global Optimization 13:455--492 Google ScholarDigital Library
- Law, A.; Kelton, W. D. (2001). Simulation Modeling and Analysis. McGraw Hill Google ScholarDigital Library
- Miller, B. L.; Goldberg, D. E. (1996). Genetic algorithms, selection schemes, and the varying effects of noise. Evolutionary Computation, 4(2):113--131 Google ScholarDigital Library
- Schmidt, C; Branke, J.; Chick, S. (2006). Integrating techniques from statistical ranking into evolutionary algorithms. Applications of Evolutionary Computation, Springer, LNCS 3907, pp. 753--762 Google ScholarDigital Library
Recommendations
Bacterial foraging optimisation algorithm, particle swarm optimisation and genetic algorithm: a comparative study
Nature inspired meta-heuristic algorithms have been widely used in order to find efficient solutions for optimisation problems, and granted results have been achieved. Particle swarm optimisation PSO algorithm is one of the most utilised algorithms in ...
Simulation-Based fitness landscape analysis and optimisation for vehicle scheduling problem
EUROCAST'11: Proceedings of the 13th international conference on Computer Aided Systems Theory - Volume Part IThe paper presents simulation optimisation methodology and tools for the vehicle scheduling problem (VSP) with time windows. The optimisation problem statement is given. The fitness landscape analysis is used to evaluate the hardness of the problem. The ...
Comments