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Introduction to modeling and generating probabilistic input processes for simulation

机译:介绍建模和生成概率输入过程以进行仿真

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Techniques are presented for modeling, fitting, and generating many of the univariate probabilistic input processes that drive discrete-event simulation experiments. Emphasis is given to the generalized beta distribution family, the Johnson translation system of distributions, and the Be¿zier distribution family because of the flexibility of these families to model a wide range of distributional shapes that arise in practical applications. Also discussed are nonparametric and semiparametric techniques for modeling and simulating time-dependent arrival streams using nonhomogeneous Poisson processes. Public-domain software implementations and current applications are presented for each input-modeling technique. The applications range from pharmaceutical manufacturing and medical decision analysis to smart-materials research and healthcare systems analysis. Many of the references include live hyperlinks providing online access to the referenced material.
机译:提出了用于建模,拟合和生成许多单变量的概率输入过程的技术,该输入过程驱动离散事件仿真实验。强调广泛性的测试版分布系列,johnson翻译系统,以及Beóâ,¿zier分销家庭,因为这些家庭的灵活性模拟了在实际应用中产生的广泛的分布形状。还讨论了使用非均匀泊松过程建模和模拟时间相关到达流的非参数和半甲型技术。为每个输入建模技术提出了公共域软件实现和当前应用程序。应用范围从制药制造和医学决策分析到智能材料研究和医疗保健系统分析。许多引用包括在线访问引用的材料的实时超链接。

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