Paper Title:
Resource Selection and Optimization in Manufacturing Grid Based on Genetic Algorithm
  Abstract

The resource selection and optimization is the key point in the application of manufacturing grid. The limitation of the existing manufacturing resource finding methods is analyzed in this paper. Based on mathematical description of the resource selection process, a GA-based optimize model is proposed and its algorithm is designed. Finally, a typical instance is illustrated to validate the model and algorithm.

  Info
Periodical
Advanced Materials Research (Volumes 314-316)
Chapter
CAM/CAE
Edited by
Jian Gao
Pages
1616-1619
DOI
10.4028/www.scientific.net/AMR.314-316.1616
Citation
J. Z. Fu, P. Mei, X. N. Shen, "Resource Selection and Optimization in Manufacturing Grid Based on Genetic Algorithm", Advanced Materials Research, Vols. 314-316, pp. 1616-1619, 2011
Online since
August 2011
Export
Price
$32.00
Share

In order to see related information, you need to Login.

In order to see related information, you need to Login.

Authors: Li Hong Qiao, C. Wang
Abstract:A scheduling approach using genetic algorithms (GA) was presented to optimize multiple projects for quality project period performance with...
755
Authors: Jing Lou, Hong Xiang Xu
Abstract:In Manufacturing Grid (MG) system, there are primarily two kinds of users: resource service consumer and resource service provider. For a...
1008
Authors: Ning Qi, Xiao Jun Zhang, Bin Qiang Wang, Jia Guo
Abstract:In order to provide high Quality of Service (QoS), rational scheduling and resource allocation are needed when a great deal of tasks...
1955
Authors: Yun Fei Cui, Xin Ming Li, Ke Wei Dong, Ji Lu Zhu
Abstract:Resource scheduling is the key port of cloud computing resource management. One excellent method may enhance the efficiency of the whole...
552
Authors: Li Jun Duan
Chapter 5: Numerical Methods, Computation Methods and Algorithms for Modeling, Simulation and Optimization, Data Mining and Data Processing
Abstract:Efficient resource scheduling in dynamic environment reveals several challenges due to its high heterogeneity, dynamic behavior, and space...
1868