【24h】

Modeling and Simulation of Service Composition in Opportunistic Networks

机译:机会网络中服务组合的建模与仿真

获取原文
获取原文并翻译 | 示例

摘要

Pervasive networks formed by users' mobile devices have the potential to exploit a rich set of distributed service components that can be composed to provide each user with a multitude of application level services. However, mobile and pervasive networks suffer from intermittent connectivity, disconnections and partitions, such that opportunistic networking techniques arc? required to enable communication. This poses novel challenges to service composition techniques. While several works have discussed middleware and architecture for service composition in well-connected wired networks and in stable MANET environments, the underlying mechanism for selecting and forwarding service requests in the significantly challenging networking environment: of opportunistic networks has not been addressed. The problem comprises three stages: i) selecting an appropriate service sequence set out of available services; ii) forwarding service inputs to the device hosting the next service in the composition; and iii) routing final service outcomes back to the requester. The proposed algorithm derives efficiency and effectiveness by taking into account the service load and location of devices providing the services, as well as intermittent, connectivity, to select a particular service set. Through extensive simulations on real and synthetic traces, we show that by using only local knowledge collected in a distributed manner, performance close to a real-time centralized system can be achieved.
机译:用户的移动设备形成的普适网络具有开发丰富的分布式服务组件的潜力,这些组件可以组成为每个用户提供大量应用程序级别的服务。但是,移动和普及型网络会遭受间歇性的连接,断开和分区的困扰,因此,机会网络技术应运而生吗?需要启用通信。这给服务组合技术提出了新的挑战。尽管有几篇文章讨论了在连接良好的有线网络中和稳定的MANET环境中用于服务组合的中间件和体系结构,但尚未解决在极具挑战性的网络环境中选择和转发服务请求的基本机制:机会网络。该问题包括三个阶段:i)从可用服务中选择适当的服务顺序; ii)将服务输入转发到托管组合中下一个服务的设备; iii)将最终服务结果路由回请求者。所提出的算法通过考虑服务负载和提供服务的设备的位置以及间歇性的连接性来选择特定的服务集,从而获得效率和有效性。通过对真实和合成轨迹的大量模拟,我们表明,仅使用以分布式方式收集的本地知识,就可以实现接近实时集中式系统的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号