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ACO-DPDGW: an ant colony optimization algorithm for data placement of data-intensive geospatial workflow

机译:ACO-DPDG:数据放置数据密集型地理空间工作流程的蚁群优化算法

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摘要

Massive data transmission between distributed data centers is the major efficiency bottleneck of geospatial workflow. Although many data placement methods have been proposed to overcome this problem, few researches have considered the impact of the structure of the workflow. In this paper, we define the problem of data placement for data-intensive geospatial workflow aiming to minimize the data transfer time. An algorithm called ant colony optimization based data placement of data-intensive geospatial workflow (ACO-DPDGW) is proposed to handle this problem. By taking advantage of the node vector to represent the traditional workflow model, the ants could place datasets and tasks in appropriate data centers according to the combination of pheromone information and heuristic information, when they visit the nodes randomly. To prevent premature convergence, a variable neighborhood search operation is embedded into ACO-DPDGW. The experiments show that our algorithm can reduce data transfer volume and data transfer time even as the numbers of datasets, tasks, and data centers increase.
机译:分布式数据中心之间的大规模数据传输是地理空间工作流程的主要效率瓶颈。虽然已经提出了许多数据放置方法来克服这个问题,但很少有研究已经考虑了工作流程结构的影响。在本文中,我们定义了数据放置的问题,用于数据密集型地理空间工作流程,旨在最小化数据传输时间。提出了一种称为基于蚁群优化的数据放置数据密集型地理空间工作流(ACO-DPDGW)的算法来处理这个问题。通过利用节点向量来表示传统的工作流模型,蚂蚁可以根据信息素信息和启发式信息的组合在随机访问节点时将数据集和任务放置在适当的数据中心。为了防止过早融合,可变邻域搜索操作嵌入到ACO-DPDG中。实验表明,即使作为数据集,任务和数据中心的数量,我们的算法也可以减少数据传输卷和数据传输时间。

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