期刊文献+

Decision Support through Intelligent Agent Based Simulation and Multiple Goal Based Evolutionary Optimization

Decision Support through Intelligent Agent Based Simulation and Multiple Goal Based Evolutionary Optimization
下载PDF
导出
摘要 Agent based simulation has successfully been applied to model complex organizational behavior and to improve or optimize aspects of organizational performance. Agents, with intelligence supported through the application of a genetic algorithm are proposed as a means of optimizing the performance of the system being modeled. Local decisions made by agents and other system variables are placed in the genetic encoding. This allows local agents to positively impact high level system performance. A simple, but non trivial, peg game is utilized to introduce the concept. A multiple objective bin packing problem is then solved to demonstrate the potential of the approach in meeting a number of high level goals. The methodology allows not only for a systems level optimization, but also provides data which can be analyzed to determine what constitutes effective agent behavior. Agent based simulation has successfully been applied to model complex organizational behavior and to improve or optimize aspects of organizational performance. Agents, with intelligence supported through the application of a genetic algorithm are proposed as a means of optimizing the performance of the system being modeled. Local decisions made by agents and other system variables are placed in the genetic encoding. This allows local agents to positively impact high level system performance. A simple, but non trivial, peg game is utilized to introduce the concept. A multiple objective bin packing problem is then solved to demonstrate the potential of the approach in meeting a number of high level goals. The methodology allows not only for a systems level optimization, but also provides data which can be analyzed to determine what constitutes effective agent behavior.
出处 《Intelligent Information Management》 2017年第3期97-113,共17页 智能信息管理(英文)
关键词 DECISION Support MULTIPLE GOAL Agent BASED GENETIC Optimization BIN Packing Decision Support Multiple Goal Agent Based Genetic Optimization Bin Packing
  • 相关文献

参考文献1

二级参考文献10

  • 1Meyrick and Associates.National intermodal terminalstudy[]..2006
  • 2Racunica I,Wynter L.Optimal location of intermodalfreight hubs[].Transport Research Part B.2005
  • 3Sambola M A.Models and algorithms for location-routingand related problems[]..2003
  • 4Taniguchi E,,Thompson R G,Yamada T,et al.City Lo-gistics:Network Modelling and Intelligent Transport Sys-tems[]..2001
  • 5Declercq E,Verbeke A.The EMOLITE project:Evalu-ation model for the optimal location of intermodal terminalsin europe[].Studies in locational analysis:Managerialmethods in location.1999
  • 6Groothedde B,Tavasszy L A.Optimization of strategicmultimodal freight transport networks using simulated an-nealing[].Proceeding of the EURO XVII:th Europe-an Conference on Operational Research.2000
  • 7Winston W L.Applications and Algorithms[]..1997
  • 8Sirikijpanichkul A.Doctor of philosophy-confirmation ofcandidature report[]..2006
  • 9Dam K H van,Nikolic I,Lukszo Z,et al.Towards a ge-neric approach for analysing the efficiency of complex net-works[].Proceedings of the IEEE InternationalConference on NetworkingSensing and Control.2006
  • 10Wooldridge M J,Jennings N R.Intelligent agents:theoryand practice[].The Knowledge Engineering Review.1995

共引文献10

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部