基于神经模糊的移动自组织网络路由协议

First A. Siddesh Gundagatti Karibasappa, Second B. K. N. Muralidhara
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引用次数: 7

摘要

无线自组织网络能够通过无线媒介进行通信,而不需要预先存在的基础设施。在过去的十年中,人们对移动自组网(MANET)进行了大量的研究。然而,即使在今天,移动自组织网络仍被视为一个相对较新的研究领域。造成这种情况的原因可以追溯到这样一个事实,即真正理解这些网络的成熟度仍然低得惊人,而且这些网络的实际部署很少。基于“主动”、“被动”、“功率感知”、“跨层”等概念,在多网寻路和链路建立方面有大量的技术。考虑到有效路线建立的几个方面中的几个方面,这些技术中的大多数都是相当严格的。在寻路优化中,必须综合考虑决定和影响路由选择的几个因素。系统的输入是多方面的,而且显然是不相关的。大多数参数本质上是不精确或不清晰的。这种不确定性和不精确性使得我们认为智能路由技术对于发展健壮可靠的寻路解决方案至关重要。实现这一目标的明显方法是部署软计算技术,如神经网络、模糊逻辑和遗传算法。我们在这里提出的论文试图在这个方向上探索新的视野。我们在hypernet模拟器上的实验结果非常令人满意,在很大程度上达到了最优寻路的目标。
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Neuro fuzzy based routing protocol for mobile ad-hoc networks
Wireless Ad Hoc Networks are capable of communication through wireless medium without the need for a pre-existing infrastructure. Much effort has gone into mobile ad-hoc network (MANET) research over the past decade. Yet, even today, mobile ad-hoc networking is seen as a relatively new area of research. The reason for this can be traced to the fact that the maturity in truly understanding these networks is still alarmingly low and actual deployment of these networks rare. There are plenty of techniques in route finding and link establishment in MANET based on various concepts such as “pro-active”, “reactive”, “power awareness”, “cross-layering” etc. Most of these techniques are rather restrictive, taking into account a few of the several aspects that go into effective route establishment. The several factors that decide and influence the routing have to be considered as a whole in the difficult task of finding the best solution in route finding and optimization. The inputs to the system are manifold and apparently unrelated. Most of the parameters are imprecise or non-crisp in nature. The uncertainty and imprecision lead to think that intelligent routing techniques are essential and important in evolving robust and dependable solutions to route finding. The obvious method by which this can be achieved is the deployment of soft computing techniques such as Neural Nets, Fuzzy Logic and Genetic algorithms. Our paper presented here seeks to explore new horizons in this direction. The results of our experimentation with simulator named hypernet have been very satisfactory and we have achieved the goal of optimal route finding to a large extent.
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