Classification-Based VQ Model for Simulation of Binary Error Process on the Wireless Channel

Tibor Csóka, J. Polec, Filip Csoka, K. Kotuliaková
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引用次数: 1

Abstract

Realistic binary error process models are particularly important for proper design of throughput increasing techniques, such as Forward Error Correction (FEC), Automatic Repeat Request (ARQ), hybrid ARQ or cross-layer optimization. Currently employed models are capable of producing realistic output for binary error process observed on the error control channel, however, most of them (including standard Gilbert and generalized Elliot's model) encounter significant limitations when modeling the binary error process of the logical channel. The proposed novel classification-based vector quantization (VQ) model is designed specifically to produce realistic error burst and error gap process of the binary error process regardless of binary channel type, also retaining high precision of the overall cluster error probability characteristic. The proposed model's precision was verified using standard statistical distances against a real wireless sensor network logical channel trace. Furthermore, the Pearson's goodness of fit test was used to verify viability of the proposed model variants. Multiple variants demonstrate both high precision and successfully pass the goodness of fit test.
基于分类的无线信道二进制错误仿真VQ模型
现实的二值误差过程模型对于正确设计吞吐量提高技术尤其重要,如前向纠错(FEC)、自动重复请求(ARQ)、混合ARQ或跨层优化。目前使用的模型能够对误差控制通道上观察到的二进制误差过程产生真实的输出,但是,大多数模型(包括标准Gilbert模型和广义Elliot模型)在对逻辑通道的二进制误差过程建模时遇到了很大的局限性。本文提出的基于分类的矢量量化(VQ)模型,在不考虑二进制信道类型的情况下,能够产生真实的二进制误差过程的误差突发和误差间隙过程,同时保持了整体聚类误差概率特性的高精度。利用标准统计距离对真实无线传感器网络逻辑信道轨迹进行了精度验证。此外,使用Pearson's拟合优度检验来验证所提出的模型变体的可行性。多个变量均具有较高的精度,并成功通过了拟合优度检验。
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