无线传感器网络按需部署中地形分类的支持向量机

Rana Haber, A. Peter, C. Otero, I. Kostanic, A. Ejnioui
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引用次数: 11

摘要

地形特征可以显著改变大规模无线传感器网络部署方法提供的结果质量。例如,严重阻塞的节点之间的传输将需要额外的传输功率来建立节点之间的连接。在某些情况下,严重阻塞的区域可能完全阻止节点建立连接。因此,在部署时,应将地形分析和具体部署区域的分类纳入评估和优化无线传感器网络性能的方法学过程中。尽管存在能够对障碍物(如植被、树叶等)建模的射频(RF)模型,但这些模型的参数值的自动分配可能会很麻烦,特别是在高度不规则的部署地形中,其中信号传播的差和最佳条件的邻近可能彼此相邻。在这种情况下,地形障碍物建模的参数估计可能会导致过于乐观或悲观的结果,从而导致部署后WSN的表征或预测偏离真实性能。本文介绍了利用支持向量机进行地形自动分类的结果。该方法可用于自动确定高障碍物区域,这对模拟中障碍物参数的估计和提高大规模不规则部署地形预部署时的整体决策过程至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A support vector machine for terrain classification in on-demand deployments of wireless sensor networks
Terrain characteristics can significantly alter the quality of the results provided by the deployment methodology of large-scale wireless sensor networks. For example, transmissions between nodes that are heavily obstructed will require additional transmission power to establish connection between nodes. In some cases, heavily obstructed areas may prevent nodes from establishing a connection at all. Therefore, terrain analysis and classification of specific deployment areas should be incorporated in the methodology process for evaluation and optimization of the performance of wireless sensor networks upon deployment. Although there exists radio frequency (RF) models capable of modeling obstructions, such as vegetation, foliage, etc., automatic assignment of parameter values for these models may be troublesome, specifically in highly irregular deployments terrains, where proximity of poor and optimal conditions for signal propagation may be adjacent to each other. In these situations, parameter estimation for modeling terrain obstruction may result in overly optimistic or pessimistic results, causing characterizations or predictions that deviate from the true performance of the WSN once deployed. This paper presents the results of employing a support vector machine for automatic terrain classification. The approach can be used to automatically determine areas of high obstruction, which is essential to estimate obstruction parameters in simulations and enhancing the overall decision-making process during pre-deployment of large-scale and irregular deployment terrains.
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