Mehmet Akpamukcu , Abdullah Ates , Ibrahim Isik , Esme Isik
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引用次数: 0
Abstract
The analysis is generally conducted in stationary receiver and transmitter models in a diffusion environment for the fundamental Molecular communication (MOC) models. However, a mobile MOC model is employed in this study, deviating from the existing literature. This mobile MOC model considers the mobility of all variables in the diffusion environment, including the transmitter, receiver, and molecules. Firstly, a novel MOC model is proposed, departing from the conventional normal distribution for the mobility of variables. Instead, alternative distribution functions such as the Pareto distribution, extreme value distribution, t-distribution, and generalized extreme value distribution are employed. Furthermore, the system's performance is enhanced by optimizing the distribution function and model parameters, such as the diffusion coefficient, using the optimization of optimization (OtoO) approach. In this approach, the Multi-Verse Optimization (MVO) algorithm serves as the primary algorithm, while the Grey Wolf Optimization (GWO) algorithm functions as the auxiliary algorithm. Essentially, the MVO algorithm optimizes the parameters of the MOC model, while simultaneously, the GWO algorithm optimizes the impact of the optimization processes of MVO on the parameters ``p'' and ``N'' as well as the constant parameter of the distribution function. By optimizing both the parameters of the MOC model and the distribution function, the number of received molecules is significantly increased. Therefore, this study not only improves the results of the MOC model structure based on different distribution functions but also optimizes all parameters of the proposed model using the MVO-GWO OtoO approach.
对于基本的分子通信(MOC)模型,分析通常是在扩散环境中的固定接收器和发射器模型中进行的。但本研究采用的是移动 MOC 模型,与现有文献有所不同。这种移动 MOC 模型考虑了扩散环境中所有变量的移动性,包括发射器、接收器和分子。首先,我们提出了一个新颖的 MOC 模型,它摒弃了变量流动性的传统正态分布。取而代之的是其他分布函数,如帕累托分布、极值分布、t 分布和广义极值分布。此外,通过使用最优化的最优化(OtoO)方法优化分布函数和模型参数(如扩散系数),系统的性能得以提升。在这种方法中,多序列优化(MVO)算法作为主要算法,而灰狼优化(GWO)算法作为辅助算法。本质上,MVO 算法优化 MOC 模型的参数,同时,GWO 算法优化 MVO 优化过程对参数 "p "和 "N "以及分布函数常数参数的影响。通过同时优化 MOC 模型参数和分布函数,接收到的分子数量显著增加。因此,本研究不仅改进了基于不同分布函数的 MOC 模型结构的结果,还利用 MVO-GWO OtoO 方法优化了拟议模型的所有参数。
期刊介绍:
The Nano Communication Networks Journal is an international, archival and multi-disciplinary journal providing a publication vehicle for complete coverage of all topics of interest to those involved in all aspects of nanoscale communication and networking. Theoretical research contributions presenting new techniques, concepts or analyses; applied contributions reporting on experiences and experiments; and tutorial and survey manuscripts are published.
Nano Communication Networks is a part of the COMNET (Computer Networks) family of journals within Elsevier. The family of journals covers all aspects of networking except nanonetworking, which is the scope of this journal.