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Magnetic Field Model (MFM) in Soft Computing and parallelization techniques for Self Organizing Networks (SON) in Telecommunications

机译:软计算中的磁场模型(MFM)和电信中自组织网络(SON)的并行化技术

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摘要

Self Organizing Networks (SON) requires efficient algorithms and effective real time and faster execution techniques to meet the SON requirements (use cases & desired functionalities) (as cited in Srinivasan R and Premnath K N., 2011). The essence of this journal paper is to showcase that Magnetic Field Model (MFM) (as cited in Premnath K N et al., 2013) can be applied in prominent soft computing and parallelization techniques for SON applications, functionalities and use cases. Vast literature and practical approaches are available as part of advancements in Machine Learning, Artificial Intelligence and Fuzzy logic. Based on inspiration from nature's behavior Swarm Intelligence derived from the behaviors of Ant colony and Genetic Algorithms (Evolutionary Algorithms) are some algorithmic techniques to mention. Parallelization of MFM for centralized, hybrid SON use cases is discussed with key inspiration from Google Map Reduce (as cited in Jeffrey Dean and Sanjay Ghemawat., 2004).
机译:自组织网络(SON)需要高效的算法,有效的实时和更快的执行技术,以满足SON的要求(用例和所需的功能)(如Srinivasan R和Premnath K N.,2011年所引用)。该期刊论文的实质是展示磁场模型(MFM)(如Premnath K N等人,2013年所引用)可用于SON应用,功能和用例的杰出软计算和并行化技术。作为机器学习,人工智能和模糊逻辑方面的进步的一部分,可以获得大量文献和实用方法。基于自然行为的启发,从蚁群的行为和遗传算法(进化算法)衍生的群体智能是一些需要提及的算法技术。集中讨论了混合SON用例的MFM并行化,其灵感来自Google Map Reduce(引自Jeffrey Dean和Sanjay Ghemawat。,2004)。

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