Hybridization of gravitational search algorithm and biogeography based optimization and its application on grid scheduling problem

Lavika Goel, Sunita Singhal, S. Mishra, Satyajit Mohanty
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引用次数: 5

Abstract

The Gravitational Search Algorithm (GSA) is a nature inspired optimization algorithm which is based on Newton's law of gravity and law of motion. Biogeography Based Optimization (BBO) is also another nature inspired optimization algorithm based on the concept of biogeography (migration and mutation among population). Both of these optimization technique are population based and individually have been applied to a large number of areas. In this paper, we are providing a hybrid GSABBO algorithm that will use the best properties of both the algorithm to enhance the exploration and exploitation properties and reach at the global optimal solution. Grid Computing refers to the sharing of resources across multiple domains to achieve a common goal. Sharing of the resources within an organization helps to enhance its overall performance computationally and economically. The advantages derived from Grid Computing are largely dependent on the scheduling algorithm we use to schedule various jobs across various resources available. This paper introduces a new approach based on the hybridization of BBO and GSA to generate optimal schedules to complete all the given tasks with minimum make span period.
重力搜索算法与生物地理优化的融合及其在电网调度问题中的应用
引力搜索算法(GSA)是一种基于牛顿引力定律和运动定律的自然优化算法。基于生物地理的优化(BBO)是另一种基于生物地理(种群间迁移和突变)概念的自然优化算法。这两种优化技术都是基于种群的,并分别应用于大量领域。在本文中,我们提供了一种混合GSABBO算法,该算法将利用两种算法的最佳特性来增强勘探和开采特性,并达到全局最优解。网格计算指的是跨多个领域共享资源,以实现一个共同的目标。组织内的资源共享有助于提高其计算和经济的整体性能。网格计算的优势很大程度上取决于我们用来跨各种可用资源调度各种作业的调度算法。本文提出了一种基于BBO和GSA混合的方法来生成最优调度,以最小的制造周期完成所有给定任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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