There are rising scenarios in communication systems, where the noises exhibit impulsive behavior and are not adequate to be modeled as the Gaussian distribution. The generalized Gaussian distribution instead is an effective model to describe real-world systems with impulsive noises. In this paper, the problem of efficiently evaluating the error performance of linear block codes over an additive white generalized Gaussian noise (AWGGN) channel is considered. The Monte Carlo (MC) simulation is a widely used but inefficient performance evaluation method, especially in the low error probability regime. As a variance-reduction technique, importance sampling (IS) can significantly reduce the sample size needed for reliable estimation based on a well-designed IS distribution. By deriving the optimal IS distribution on the one-dimensional space mapped from the observation space, we present a general framework to designing IS estimators for memoryless continuous channels. Specifically, for the AWGGN channel, we propose an $L_p$-norm-based minimum-variance IS estimator. As an efficiency measure, the asymptotic IS gain of the proposed estimator is derived in a multiple integral form as the signal-to-noise ratio tends to infinity. Specifically, for the Laplace and Gaussian noises, the gains can be derived in a one-dimensional integral form, which makes the numerical calculation affordable. In addition, by limiting the use of the union bound to an optimized $L_1$-norm sphere, we derive the sphere bound for the additive white Laplace noise channel. Simulation results verify the accuracy of the derived IS gain in predicting the efficiency of the proposed IS estimator.
翻译:在通信系统中出现了不断上升的情况,噪音表现出冲动行为,而且不足以以高斯分布为模型。通用高斯分布法是描述具有冲动噪音的现实世界系统的有效模式。在本文中,考虑如何有效地评价线性区块代码在添加的白色通用高斯噪音(AWGGN)频道上的错误性能。蒙特卡洛(MC)模拟是一种广泛使用但效率低的性能评价方法,特别是在低误差概率制度中。作为减少差异技术,重要取样(IS)可以大大降低基于设计良好的IS分布法进行可靠估算所需的样本规模。通过在从观测空间绘制的一维空间上生成最佳的IS分布法,我们提出了一个总体框架,用于设计无记忆的连续频道的线性区代码。具体地说,我们建议使用以美元为基底价为基础的最低性能变化评估方法。作为效率衡量,拟议的稳定性能采集的Sitemalimmologia1, 将Salia的平面计算结果用一个多维值计算法化,将Sal-lational-lationa-lational 的计算成一个精确度,将Sal-lationlation-lational-lation-lational-lation-lational-leval 的计算为一个精确度的计算法,将Sal-lational-lation-leval-lational-leval-leval-lational-lational-lational-lational-lational-lational-lationsal-lationsmaxxxxxxxxxxxxxxxxx为一个以以以以一个精确为一个精确的计算法,将一个以以以以一个精确度的计算法,将一个精确到一个精确计算法,将一个精确到一个精确的计算,将一个精确为一个精确为一个精确为一个精确为一个精确的计算法,以的计算。