Representation of the Middleton class B model by symmetric alpha-stable processes and chi-distributions

Yongsub Kim, G. Tong Zhou
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引用次数: 11

Abstract

Signal processing in non-Gaussian noise environments has attracted much attention recently, due to the poor performance of conventional systems based on the Gaussian assumption. The Middleton class B model has been shown in the literature as an appropriate model to describe certain non-Gaussian interference phenomena. However, its use is often limited because the probability density function has a very complicated form. We derive a mixture representation for the Middleton class B model where the density function is expressed as a weighted sum of chi-distributions with positive and monotonically decreasing coefficients. Therefore, the user can chose a finite linear combination of these simple distributions to approximate the Middleton class B density function to any desirable accuracy. The results presented help to extend the applicability of the Middleton class B model in practice.
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米德尔顿B类模型的对称稳定过程和chi-分布表示
由于基于高斯假设的传统系统性能不佳,非高斯噪声环境下的信号处理近年来备受关注。米德尔顿B类模型在文献中已被证明是描述某些非高斯干涉现象的合适模型。然而,由于概率密度函数具有非常复杂的形式,它的使用往往受到限制。我们导出了米德尔顿B类模型的混合表示,其中密度函数表示为具有正和单调递减系数的卡分布的加权和。因此,用户可以选择这些简单分布的有限线性组合来近似米德尔顿B类密度函数到任何理想的精度。所得结果有助于扩展米德尔顿B类模型在实践中的适用性。
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