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ÀýÈç, ÔÚÉÏÃæµÄÉñ¾ÍøÂçѵÁ·Àý×ÓÖÐ, ×îС´íÎó¿ÉÒÔÉ趨Ϊ1¸ö´íÎó·ÖÀà, ×î´óÑ»·É趨Ϊ2000, Õâ¸öÖÐÖ¹Ìõ¼þÓɾßÌåµÄÎÊÌâÈ·¶¨. È«¾ÖPSOºÍ¾Ö²¿PSO: ÎÒÃǽéÉÜÁËÁ½ÖÖ°æ±¾µÄÁ£×ÓȺÓÅ»¯Ëã·¨: È«¾Ö°æºÍ¾Ö²¿°æ. ǰÕßËٶȿ첻¹ýÓÐʱ»áÏÝÈë¾Ö²¿×îÓÅ. ºóÕßÊÕÁ²ËÙ¶ÈÂýÒ»µã²»¹ýºÜÄÑÏÝÈë¾Ö²¿×îÓÅ. ÔÚʵ¼ÊÓ¦ÓÃÖÐ, ¿ÉÒÔÏÈÓÃÈ«¾ÖPSOÕÒµ½´óÖµĽá¹û,ÔÙÓоֲ¿PSO½øÐÐËÑË÷. ÁíÍâµÄÒ»¸ö²ÎÊýÊǹßÐÔÈ¨ÖØ, ÓÉShi ºÍEberhartÌá³ö, ÓÐÐËȤµÄ¿ÉÒԲο¼ËûÃÇ1998ÄêµÄÂÛÎÄ(ÌâÄ¿: A modified particle swarm optimizer) 7. Online Resources of PSO The development of PSO is still ongoing. And there are still many unknown areas in PSO research such as the mathematical validation of particle swarm theory. One can find much information from the internet. Following are some information you can get online: http://www.particleswarm.net lots of information about Particle Swarms and, particularly, Particle Swarm Optimization. lots of Particle Swarm Links. http://icdweb.cc.purdue.edu/~hux/PSO.shtml lists an updated bibliography of particle swarm optimization and some online paper links http://www.researchindex.com/ you can search particle swarm related papers and references. References: http://www.engr.iupui.edu/~eberhart/ http://users.erols.com/cathyk/jimk.html http://www.alife.org http://www.aridolan.com http://www.red3d.com/cwr/boids/ http://iridia.ulb.ac.be/~mdorigo/ACO/ACO.html http://www.engr.iupui.edu/~shi/Coference/psopap4.html Kennedy, J. and Eberhart, R. C. Particle swarm optimization. Proc. IEEE int'l conf. on neural networks Vol. IV, pp. 1942-1948. IEEE service center, Piscataway, NJ, 1995. Eberhart, R. C. and Kennedy, J. A new optimizer using particle swarm theory. Proceedings of the sixth international symposium on micro machine and human science pp. 39-43. IEEE service center, Piscataway, NJ, Nagoya, Japan, 1995. Eberhart, R. C. and Shi, Y. Particle swarm optimization: developments, applications and resources. Proc. congress on evolutionary computation 2001 IEEE service center, Piscataway, NJ., Seoul, Korea., 2001. Eberhart, R. C. and Shi, Y. Evolving artificial neural networks. Proc. 1998 Int'l Conf. on neural networks and brain pp. PL5-PL13. Beijing, P. R. China, 1998. Eberhart, R. C. and Shi, Y. Comparison between genetic algorithms and particle swarm optimization. Evolutionary programming vii: proc. 7th ann. conf. on evolutionary conf., Springer-Verlag, Berlin, San Diego, CA., 1998. Shi, Y. and Eberhart, R. C. Parameter selection in particle swarm optimization. Evolutionary Programming VII: Proc. EP 98 pp. 591-600. Springer-Verlag, New York, 1998. Shi, Y. and Eberhart, R. C. A modified particle swarm optimizer. Proceedings of the IEEE International Conference on Evolutionary Computation pp. 69-73. IEEE Press, Piscataway, NJ, 1998 |
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