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Design and analysis of distributed load management: Mobile agent based probabilistic model and fuzzy integrated model

机译:分布式负荷管理的设计与分析:基于移动代理的概率模型和模糊综合模型

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摘要

In large-scale distributed systems, performing load monitoring and load balancing is a challenging task in terms of load management. In order to enhance the overall system performance, we have developed and implemented two different models for large-scale distributed load management. The mobile agent-based system is based on a probabilistic normed estimation model. This model uses mobile agents for collecting the instantaneous status of currently available node resources autonomously. The mobile agent is goal oriented and consumes less network and system resources, which is ideal for load monitoring for large-scale distributed systems. Moreover, we have proposed an integrated load balancing and monitoring model for distributed computing systems employing type-1 fuzzy logic. Furthermore, we have proposed a smooth and composite fuzzy membership function in order to model fine-grained load information in a system. In this paper, a detailed software architectural design for mobile agent based load monitoring system as well as the fuzzy-based load balancing approach are presented. The experimental evaluation is presented to compare the behavior and performance of the mobile agent-based probabilistic model and fuzzy integrated model under different load conditions. A detail comparative analysis is presented for the mobile agent-based probabilistic model and fuzzy integrated model to show the performance and efficiency of each model. In this paper, we have computed cross-correlation to find the relation between our proposed models (FIM and MABMS).
机译:在大型分布式系统中,执行负载监控和负载平衡是负载管理方面的具有挑战性的任务。为了提高整体系统性能,我们开发并实施了两种不同的模型,用于大型分布式负载管理。基于移动代理的系统基于概率规范估计模型。该模型使用移动代理来自主地收集当前可用节点资源的瞬时状态。移动代理是面向目标和消耗更少的网络和系统资源,这对于大规模分布式系统的负载监控是理想的。此外,我们已经提出了采用1型模糊逻辑的分布式计算系统的集成负载平衡和监控模型。此外,我们已经提出了平滑和复合模糊的成员资格函数,以便在系统中模拟细粒度的负载信息。本文提出了一种基于移动代理的负载监控系统的详细软件架构设计以及基于模糊的负载平衡方法。提出了实验评估,以比较不同负载条件下的基于移动代理的概率模型和模糊集成模型的行为和性能。介绍了基于移动代理的概率模型和模糊集成模型的细节比较分析,以显示每个模型的性能和效率。在本文中,我们已经计算了互相关,以找到我们所提出的模型(FIM和MABMS)之间的关系。

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