首页 | 本学科首页   官方微博 | 高级检索  
     


Genetic-algorithms-based algorithm portfolio for inventory routing problem with stochastic demand
Authors:Nagesh Shukla  MK Tiwari  Darek Ceglarek
Affiliation:1. International Digital Laboratory , WMG, University of Warwick , Coventry , UK;2. SMART Infrastructure Facility , University of Wollongong , Wollongong , Australia nshukla@uow.edu.au;4. Department of Industrial Engineering &5. Management , Indian Institute of Technology , Kharagpur , India;6. Department of Industrial &7. Systems Engineering , University of Wisconsin-Madison , Madison , USA
Abstract:This paper presents an algorithm portfolio methodology based on evolutionary algorithms to solve complex dynamic optimisation problems. These problems are known to have computationally complex objective functions, which make their solutions computationally hard to find, when problem instances of large dimensions are considered. This is due to the inability of the algorithms to provide an optimal or near-optimal solution within an allocated time interval. Therefore, this paper employs a bundle of evolutionary algorithms (EAs) tied together with several processors, known as an algorithm portfolio, to solve a complex optimisation problem such as the inventory routing problem (IRP) with stochastic demands. EAs considered for algorithm portfolios are the genetic algorithm and its four variants such as the memetic algorithm, genetic algorithm with chromosome differentiation, age-genetic algorithm, and gender-specific genetic algorithm. In order to illustrate the applicability of the proposed methodology, a generic method for algorithm portfolios design, evaluation, and analysis is discussed in detail. Experiments were performed on varying dimensions of IRP instances to validate different properties of algorithm portfolio. A case study was conducted to illustrate that the set of EAs allocated to a certain number of processors performed better than their individual counterparts.
Keywords:genetic algorithms  algorithm portfolios  inventory routing  stochastic demand
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号