Welcome!
To use the personalized features of this site, please log in or register.
If you have forgotten your username or password, we can help.
My Menu
Saved Items

Optimal Elevator Group Control by Evolution Strategies

Thomas BeielsteinContact Information, Claus-Peter EwaldContact Information and Sandor MarkonContact Information

(5)  Universtität Dortmund, D-44221 Dortmund, Germany
(6)  NuTech Solutions GmbH, Martin-Schmeisser Weg 15, D-44227 Dortmund, Germany
(7)  World Headquarters, FUJITEC Co.Ltd., 28-10, Shoh 1-chome, Osaka, Japan
Abstract
Efficient elevator group control is important for the operation of large buildings. Recent developments in this field include the use of fuzzy logic and neural networks. This paper summarizes the development of an evolution strategy (ES) that is capable of optimizing the neuro-controller of an elevator group controller. It extends the results that were based on a simplified elevator group controller simulator. A threshold selection technique is presented as a method to cope with noisy fitness function values during the optimization run. Experimental design techniques are used to analyze first experimental results.

Contact Information Thomas Beielstein
Email: Thomas.Beielstein@udo.edu
URL: http://ls11-www.cs.uni-dortmund.de/people/tom/index.html

Contact Information Claus-Peter Ewald
Email: Ewald@nutechsolutions.de
URL: http://www.nutechsolutions.de

Contact Information Sandor Markon
Email: markon@rd.fujitec.co.jp
URL: http://www.fujitec.com
Fulltext Preview (Small, Large)
Image of the first page of the fulltext

References secured to subscribers.



Export this chapter
Export this chapter as RIS | Text
 
Remote Address: 38.107.191.106 • Server: mpweb23
HTTP User Agent: CCBot/1.0 (+http://www.commoncrawl.org/bot.html)