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首页> 外文期刊>Communications Surveys & Tutorials, IEEE >On Swarm Intelligence Inspired Self-Organized Networking: Its Bionic Mechanisms, Designing Principles and Optimization Approaches
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On Swarm Intelligence Inspired Self-Organized Networking: Its Bionic Mechanisms, Designing Principles and Optimization Approaches

机译:群体智能启发的自组织网络:其仿生机制,设计原理和优化方法

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摘要

Inspired by swarm intelligence observed in social species, the artificial self-organized networking (SON) systems are expected to exhibit some intelligent features (e.g., flexibility, robustness, decentralized control, and self-evolution, etc.) that may have made social species so successful in the biosphere. Self-organized networks with swarm intelligence as one possible solution have attracted a lot of attention from both academia and industry. In this paper, we survey different aspects of bio-inspired mechanisms and examine various algorithms that have been applied to artificial SON systems. The existing well-known bio-inspired algorithms such as pulse-coupled oscillators (PCO)-based synchronization, ant- and/or bee-inspired cooperation and division of labor, immune systems inspired network security and Ant Colony Optimization (ACO)-based multipath routing have been surveyed and compared. The main contributions of this survey include 1) providing principles and optimization approaches of variant bio-inspired algorithms, 2) surveying and comparing critical SON issues from the perspective of physical-layer, Media Access Control (MAC)-layer and network-layer operations, and 3) discussing advantages, drawbacks, and further design challenges of variant algorithms, and then identifying their new directions and applications. In consideration of the development trends of communications networks (e.g., large-scale, heterogeneity, spectrum scarcity, etc.), some open research issues, including SON designing tradeoffs, Self-X capabilities in the 3rd Generation Partnership Project (3GPP) Long Term Evolution (LTE)/LTE-Advanced systems, cognitive machine-to-machine (M2M) self-optimization, cross-layer design, resource scheduling, and power control, etc., are also discussed in this survey.
机译:受到在社会物种中观察到的群智能的启发,人工自组织网络(SON)系统有望展现出一些智能特征(例如灵活性,鲁棒性,分散控制和自我进化等),这些特征可能已经使社会物种成为现实。在生物圈中如此成功。以群体智能作为一种可能的解决方案的自组织网络已经引起了学术界和工业界的广泛关注。在本文中,我们调查了生物启发机制的不同方面,并研究了已应用于人工SON系统的各种算法。现有的著名生物启发算法,例如基于脉冲耦合振荡器(PCO)的同步,蚂蚁和/或蜜蜂启发的合作和分工,免疫系统启发了网络安全性以及基于蚁群优化(ACO)多路径路由已被调查和比较。这项调查的主要贡献包括:1)提供各种受生物启发算法的原理和优化方法,2)从物理层,媒体访问控制(MAC)层和网络层操作的角度调查和比较关键的SON问题。和3)讨论变式算法的优缺点和进一步的设计挑战,然后确定其新的方向和应用。考虑到通信网络的发展趋势(例如大规模,异构,频谱稀缺等),一些开放的研究问题包括SON设计的权衡,3 rd 中的Self-X功能还讨论了一代合作伙伴计划(3GPP)长期演进(LTE)/高级LTE系统,认知机器对机器(M2M)自优化,跨层设计,资源调度和功率控制等。这项调查。

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