Information Technology Reference
In-Depth Information
References
B
ä
ck, T., Fogel, D. B., & Michalewicz, Z. (1997). Handbook of evolutionary computation.
London: IOP Publishing and Oxford University Press.
Bal
czy, L. T. (2010a). Comparison of various evolutionary and
memetic algorithms. Integrated Uncertainty Management and Applications, Advances in
Intelligent and Soft Computing, 68, 431 - 442.
Bal á zs, K., Horv á th, Z., &K ó czy, L. T. (2012). Different chromosome based evolutionary approaches
for the permutation flow shop problem. Acta Polytechnica Hungarica, 2(2), 115 - 138.
Bal á zs, K., K ó czy, L. T., & Botzheim, J. (2010b). Comparative investigation of various
evolutionary and memetic algorithms. In I. J. Rudas., J. Fodor., & J. Kacprzyk (Eds.),
Computational intelligence in engineering, studies in computational intelligence (vol 313,
pp. 129 - 140). Berlin: Springer.
Beigl, P., Lebersorger, S., & Salhofer, S. (2008). Modelling municipal solid waste generation: a
review. Journal of Waste Management, 28, 200
á
zs, K., Botzheim, J., & K
ó
214.
-
Botzheim, J., Cabrita, C., K
czy, L. T., & Ruano, A. E. (2009a). Fuzzy rule extraction by bacterial
memetic algorithms. International Journal of Intelligent Systems, 24(3), 312
ó
339.
-
Botzheim, J., F
czy L. T. (2009b). Solution for fuzzy road transport travelling
salesman problem using eugenic bacterial memetic algorithm. In Proceedings of IFSA/
EUSFLAT Conference
ö
ldesi P., & K
ó
1672).
Bovea, M. D., & Powell, J. C. (2006). Alternative scenarios to meet the demands of sustainable
waste management. Journal of Environmental Management, 79, 115
'
2009 (pp. 1667
-
132.
-
Buruzs, A., Hatw
czy, L. T. (2013b). Advanced learning of fuzzy
cognitive maps of waste management by bacterial algorithm. In Proceedings of IFSA World
Congress and NAFIPS Annual Meeting (pp. 890 - 895). IEEE.
Buruzs, A., Pozna, R. C., & K ó czy, L. T. (2013a). Developing fuzzy cognitive maps for modelling
regional waste management systems. In Y, Tsompanakis. (Ed.), Proceedings of the Third
International Conference on Soft Computing Technology in Civil, Structural and Environ-
mental Engineering, Paper 19. Stirlingshire, UK: Civil-Comp Press doi: 10.4203/ccp.103.19 .
Carvalho, J. P. (2010). On the semantics and the use of fuzzy cognitive maps in social sciences.
Soft Computing in the Humanities and Social Science, 214,6
á
gner, M. F., Pozna, R. C., & K
ó
19.
Council Directive 1999/31/EC of April 26 1999 on the landfill of waste.
D
-
á
ny
czy, L. T. (2010a). A comparative study of various evolutionary
algorithms and their combinations for optimizing fuzzy rule-based inference systems. Scientific
Bulletin of
á
di, Zs, Bal
á
zs, K., & K
ó
University of Timisoara, Romania, Transactions on Automatic
Control and Computer Science 55(69), 247
Politechnica
254.
-
D
á
ny
czy, L. T. (2010b). A fuzzy bacterial evolutionary solution for three
dimensional bin packing problems. Acta Technica Jaurinensis, Series Logistica, 3(3), 325
á
di, Zs., F
ö
ldesi, P., & K
ó
334.
-
Darwin, C. R. (1859). The origin of species. London: John Murray.
Demirbas, A. (2011). Waste management, waste resource facilities and waste conversion
processes. Journal of Energy Conservation and Management, 52(2), 1280
1287.
den Boer, E., & Lager, J. (2007). LCA-IWM: A decision support tool for sustainability assessment
of waste management systems. Journal of Waste Management, 27(8), 1032 - 1045.
Engelbrecht, A. P. (2007). Computational intelligence: An introduction. England: Wiley.
European Parliament and Council Directive 94/62/EC of December 20, 1994 on packaging and
packaging waste.
G á l, L., Botzheim, J., & K ó czy, L. T. (2008). Modified bacterial memetic algorithm used for fuzzy
rule base extraction. In Proceedings of the 5th International of Conference on Soft Computing
as Transdisciplinary Science and Technology (pp. 425
-
431). USA:ACM.
Goldberg, D. E. (1989). Genetic algorithms in search, optimization, and machine learning. Boston:
Addison-Wesley Publishing Company, Inc.
-
Search WWH ::




Custom Search