2008
DOI: 10.1109/tsmcc.2007.913904
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A Double-Deck Elevator Group Supervisory Control System Using Genetic Network Programming

Abstract: Elevator group supervisory control systems (EGSCSs) are designed so that the movement of several elevators in a building is controlled efficiently. The efficient control of EGSCSs using conventional control methods is very difficult due to its complexity, so it is becoming popular to introduce artificial intelligence (AI) technologies into EGSCSs in recent years. As a new approach, a graph-based evolutionary method named genetic network programming (GNP) has been applied to the EGSCSs, and its effectiveness is… Show more

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Cited by 132 publications
(50 citation statements)
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“…It was the case of Tyni et al (2006) that developed a biobjective genetic algorithm that optimized the waiting times and the energy consumption for the KONE Corporation. Later, Hirasawa et al (2008) applied another genetic approach to a specific type of elevators that are called double-deck where two cages are connected in a shaft have been developed for the rising demand of more efficient transport of passengers in high-rise buildings. Here, the authors develop a graph-based evolutionary method named genetic network programming that introduce various node functions that can be easily executed by an efficient rule-based group supervisory control that is optimized in an evolutionary way.…”
Section: Related Workmentioning
confidence: 99%
“…It was the case of Tyni et al (2006) that developed a biobjective genetic algorithm that optimized the waiting times and the energy consumption for the KONE Corporation. Later, Hirasawa et al (2008) applied another genetic approach to a specific type of elevators that are called double-deck where two cages are connected in a shaft have been developed for the rising demand of more efficient transport of passengers in high-rise buildings. Here, the authors develop a graph-based evolutionary method named genetic network programming that introduce various node functions that can be easily executed by an efficient rule-based group supervisory control that is optimized in an evolutionary way.…”
Section: Related Workmentioning
confidence: 99%
“…The scientific literature has been attracting research on such types of architecture over recent years. An example is a group supervisory control system that uses genetic network programming, whose optimisation and performance evaluation are done through simulations, [50]. First of all, optimisation of the genetic network programming for the double-deck system is executed.…”
Section: V1 Constructive Solutions: Double-deck Liftsmentioning
confidence: 99%
“…Although mathematical approaches have been sometimes considered (see Zhang et al, 2010;Mulvaney et al, 2010;or Utgoff and Connell, 2012), advanced approaches including soft computing or artificial intelligence algorithms are prevailing to provide optimal car-call allocation for EGCS in nowadays. In this line, genetic algorithms have been widely used providing good and valuable results since a long time (Fujino et al, 1997;CortĂ©s et al, 2004;Tyni and Ylinen, 2006) and research continues being undertaken in this field (Hirasawa et al, 2008;Bolat et al, 2010). Also, other soft computing techniques such as particle swarm optimization have been also applied , as well as immune systems algorithms .…”
Section: Introductionmentioning
confidence: 99%