Optimization of Handover Events for an Efficient Resource Allocation in an Internet of Things Network Through Computational Simulation Based on The Moivre-Laplace Theorem

H. Nieto-Chaupis
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Abstract

When the Internet of Things (IoT) network is established and running in large cities is crucial to measure the quality of service (QoS) associated to it. This clearly demands that the wireless communications connection have competitive network capabilities such as efficient radio resource allocation which should be coherently optimized in order to maintain an acceptable QoS and allow users to perform soft and hard handover without major limitations. In this paper we measure the through-put for uplink and downlink events through a computational scheme based essentially in a mathematical formalism derived from the Moivre-Laplace theorem as well as the Shannon’s entropy. All this formalism and the computational methodology are done under the assumption that users are carrying out interference each other. We have estimated probabilities for accessing the network including in our methodology the blocking probabilities expected to be realized in hybrid networks that are running IoT with unexpected saturation of requests for cells occupation. From the results of this paper the throughput error of signal to interference ratio for a concrete scenario of mobile users trying to occupy a cell in a base station have been of order of 5%.
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基于电影-拉普拉斯定理的物联网网络资源高效分配切换事件优化计算仿真
当物联网(IoT)网络在大城市建立和运行时,衡量与之相关的服务质量(QoS)至关重要。这显然要求无线通信连接具有竞争性的网络能力,例如有效的无线电资源分配,应该进行相干优化,以保持可接受的QoS,并允许用户在没有重大限制的情况下执行软切换和硬切换。在本文中,我们通过一种计算方案来测量上行链路和下行链路事件的吞吐量,这种计算方案基本上基于从moivr - laplace定理和香农熵派生的数学形式。所有这些形式和计算方法都是在假设用户相互干扰的情况下进行的。我们估计了访问网络的概率,包括在我们的方法中,预计在运行物联网的混合网络中实现的阻塞概率,这些混合网络具有意想不到的蜂窝占用请求饱和。从本文的研究结果来看,在移动用户试图占用基站小区的具体场景下,信号干扰比的吞吐量误差约为5%。
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