A contact prediction method for DTNs based on BP artificial neural network

Haiquan Wang, Ying Yang, Yifeng Hu, Zexi Li
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引用次数: 1

Abstract

Predicting the contact of the nodes in Delay Tolerant Networks (DTNs) helps to determine the next node of a data package and choose an appropriate transfer opportunity. The existing contact prediction methods mainly divide into two types, model-based methods and history-based methods. The model-based methods always need the location, velocity and direction of nodes which are difficult to obtain. So, this kind of methods can only suit one particular scenario, which don't have good adaptability. The history-based methods all consider the future contact has a linear correlation with the history contact, but in fact the future contact of nodes is also influenced by nodes' position, velocity, direction and other factors, in this way, the future contact shouldn't have a linear correlation with the history contact. In this paper, a contact prediction method for DTNs based on BP artificial neural network is proposed which uses BP neural network to predict the future contact of two nodes. This method includes two parts: discretization of time and design of BP neural network. The results show that this method can predict the future contact of two nodes more accurately than existing PROPHET.
一种基于BP人工神经网络的接触面预测方法
预测容忍延迟网络中节点的接触有助于确定数据包的下一个节点并选择合适的传输机会。现有的接触面预测方法主要分为基于模型的方法和基于历史的方法两大类。基于模型的方法总是需要节点的位置、速度和方向,这些信息很难得到。因此,这种方法只能适用于一种特定的场景,没有很好的适应性。基于历史的方法都认为未来接触与历史接触具有线性相关关系,但实际上节点的未来接触还受到节点位置、速度、方向等因素的影响,因此未来接触不应该与历史接触具有线性相关关系。本文提出了一种基于BP人工神经网络的接触面预测方法,该方法利用BP神经网络对两个节点的未来接触进行预测。该方法包括时间离散化和BP神经网络设计两个部分。结果表明,该方法比现有的PROPHET方法能更准确地预测两个节点的未来接触。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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