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Double Regression: Efficient Spatially Correlated Path loss Model for Wireless Network Simulation

机译:双回归:无线网络仿真有效空间相关路径损耗模型

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The accuracy of wireless network packet simulation critically depends on the quality of the wireless channel models. These models directly affect the fundamental network characteristics, such as link quality, transmission range, and capture effect, as well as their dynamic variation in time and space. Path loss is the stationary component of the channel model affected by the shadowing in the environment. Existing path loss models are inaccurate, require very high measurement or computational overhead, and/or often cannot be made to represent a given environment. The paper contributes a flexible path loss model that uses a novel approach for spatially coherent interpolation from available nearby channels to allow accurate and efficient modeling of path loss. We show that the proposed model, called Double Regression (DR), generates a correlated space, allowing both the sender and the receiver to move without abrupt change in path loss. Combining DR with a traditional temporal fading model, such as Rayleigh fading, provides an accurate and efficient channel model that we integrate with the NS-2 simulator. We use measurements to validate the accuracy of the model for a number of scenarios. We also show that there is substantial impact on simulation behavior (e.g., up to 600% difference in throughput for simple scenarios) when path loss is modeled accurately.
机译:无线网络数据包模拟的准确性批判性地取决于无线信道模型的质量。这些模型直接影响基本网络特性,如链路质量,传输范围和捕获效果,以及它们的动态变化以及时间和空间。路径损耗是受环境中阴影影响的频道模型的静止分量。现有路径损耗模型不准确,需要非常高的测量或计算开销,并且/或通常不能代表给定的环境。本文有助于一种灵活的路径损耗模型,它使用了从附近通道的可用的空间相干插值的新方法,以允许准确和有效的路径损耗建模。我们表明,所提出的模型称为双回归(DR),产生相关空间,允许发件人和接收器在没有突然变化的路径损耗中移动。将DR与传统的时间衰落模型相结合,例如Rayleigh衰落,提供了一种与NS-2模拟器集成的准确和有效的通道模型。我们使用测量值来验证模型的准确性,以获得许多方案。我们还表明,当准确建模路径损耗时,对模拟行为有很大的影响(例如,对于简单方案的吞吐量高达600%)。

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