The coexistence of different Radio Access Technologies (RATs) in the same area has enabled the researchers to get profit from the available networks by the selection of the best RAT at each moment to satisfy the user requirements. The challenge is to achieve the Always Best Connected (ABC) concept; the main issue is the automatic choice of the suitable Radio Access Technology (RAT) from the list of the available RATs. This decision is called network selection (NS). In this paper, we propose a modified Simple Additive Weigh (modified-SAW) function to deal with the drawbacks of the existing solutions. Indeed, the existing Multiple Attribute Decision Making (MADM) methods suffer mainly from the famous problem of rank reversal once an alternative is added or removed, other problems occur in the legacy MADMs. We modify the SAW method intelligently and we use it to solve the NS problem. Finally, we compare the performance of our solution with the previous works in different scenarios; the simulations show that our proposal outperforms the other existing methods
翻译:不同无线电接入技术在同一地区的共存使得研究人员能够从现有的网络中获利,方法是在每一时刻选择最好的RAT来满足用户要求。挑战在于实现“永远最佳连接(ABC)”概念;主要问题是从现有的RAT列表中自动选择合适的无线电接入技术(RAT)。这个决定称为网络选择。在本文中,我们提议了一个修改的简单Additive Weigh(修改过的SAW)功能,以处理现有解决方案的缺陷。事实上,现有的多重属性决策方法主要受到一个著名的问题的影响,即一旦增加或删除了一种替代品,排名就会发生颠倒问题,遗留的MADM中也会出现其他问题。我们明智地修改了光学方法,并用它来解决NS问题。最后,我们将我们的解决办法的绩效与以前在不同情况下的工程作比较;模拟表明,我们的提案超过了其他现有方法。