基于深度神经元的无线多跳网络移动模型分类器

Daniel Gutiérrez, S. Toral
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引用次数: 2

摘要

移动性对无线多跳网络的性能起着至关重要的作用。由于通信是以多跳方式建立的,因此节点的移动性可能会导致性能的显著降低。因此,分析节点的移动性对于提高在无线多跳网络上实现的应用程序的性能具有重要意义。这项工作评估了两种神经网络模型,如全连接或多层感知器和1D卷积模型,用于多达四种广泛使用的无线多跳网络移动模型的分类。对两种模型的几种体系结构进行了评估和参数化。结果表明,具有一维卷积层的体系结构具有相当好的性能。测试结果表明,最佳卷积一维模型能够达到0.91的准确率水平,比最佳多层感知器模型高出13.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Neuronal Based Classifiers for Wireless Multi-hop Network Mobility Models
Mobility plays an important role in the performance of wireless multi-hop networks. Since communications are established in a multi-hop fashion, the mobility of nodes can cause a significant degradation of the performance. Therefore, the analysis of nodes' mobility is relevant to improve the performance of the applications implemented over wireless multi-hop networks. This work evaluates two neuronal network models, such as fully connected or multi-layer perceptron and 1D convolutional models, for the classification of up to four widely used mobility models for wireless multi-hop networks. Several architectures are evaluated and parametrized for both models. The results indicate a considerable better performance of an architecture with 1D convolutional layers. The test results show that the best convolutional 1D model is able to reach an accuracy level of 0.91, outperforming the best multi-layer perceptron model in 13,9 %.
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