Fast Simulation of Ultra-Reliable Coded Communication System via Adaptive Shaping of Noise Histogram

You-Zong Yu, D. Lin
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引用次数: 5

Abstract

To estimate the probability of an event, conventional Monte Carlo (MC) needs $100/P_{\mathrm {e}}$ simulation runs to attain a 10% precision, where $P_{\mathrm {e}}$ is the probability of the event. It therefore encounters difficulty in simulation-based evaluation of packet error rates for ultra-reliable communication under its stringent requirement. Many fast simulation techniques for evaluating the probability of rare events have been proposed. However, a more efficient method for coded communication systems that can adaptively exploit the code structure and concentrate the generated noise vectors to the error-prone regions is desirable. We propose a method which seeks to adaptively learn a certain optimal histogram of the noise vectors and generate the noise vectors accordingly. The said histogram is a one-dimensional function and hence is easy to work with. The adaptation mechanism is code-agnostic. Simulation with cyclic redundancy check-aided polar coding in additive white Gaussian noise shows an approximately 10-100 times speed-up compared to conventional MC.
基于噪声直方图自适应整形的超可靠编码通信系统快速仿真
为了估计事件的概率,传统的蒙特卡罗(MC)需要$100/P_{\mathrm {e}}$模拟运行以达到10%的精度,其中$P_{\mathrm {e}}$是事件的概率。因此,在超可靠通信的严格要求下,基于仿真的分组错误率评估遇到了困难。人们提出了许多评估罕见事件概率的快速模拟技术。然而,需要一种更有效的编码通信系统方法,能够自适应地利用编码结构并将生成的噪声向量集中到容易出错的区域。我们提出了一种自适应学习噪声向量的最优直方图并生成相应噪声向量的方法。所述直方图是一个一维函数,因此很容易处理。适应机制与代码无关。在加性高斯白噪声条件下,循环冗余校验辅助极化编码的仿真结果表明,与传统编码相比,编码速度提高了约10-100倍。
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