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Mean Field Approximation of Uncertain Stochastic Models

机译:不确定随机模型的平均场逼近

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摘要

We consider stochastic models in presence of uncertainty, originating from lack of knowledge of parameters or by unpredictable effects of the environment. We focus on population processes, encompassing a large class of systems, from queueing networks to epidemic spreading. We set up a formal framework for imprecise stochastic processes, where some parameters are allowed to vary in time within a given domain, but with no further constraint. We then consider the limit behaviour of these systems as the population size goes to infinity. We prove that this limit is given by a differential inclusion that can be constructed from the (imprecise) drift. We provide results both for the transient and the steady state behaviour. Finally, we discuss different approaches to compute bounds of the so-obtained differential inclusions, proposing an effective control-theoretic method based on Pontryagin principle for transient bounds. This provides an efficient approach for the analysis and design of large-scale uncertain and imprecise stochastic models. The theoretical results are accompanied by an in-depth analysis of an epidemic model and a queueing network. These examples demonstrate the applicability of the numerical methods and the tightness of the approximation.
机译:我们考虑存在不确定性的随机模型,这是由于缺乏参数知识或环境的不可预测因素引起的。我们专注于人口过程,包括从排队网络到流行病传播的一大类系统。我们为不精确的随机过程建立了一个正式的框架,该框架允许某些参数在给定域内随时间变化,但没有进一步的约束。然后,当人口规模达到无穷大时,我们考虑这些系统的极限行为。我们证明了这个极限是由可以由(不精确的)漂移构造的微分包含所给定的。我们提供瞬态和稳态行为的结果。最后,我们讨论了计算所得微分包含物边界的不同方法,并提出了一种基于庞特里亚金原理的有效控制理论方法来求解瞬态边界。这为大型不确定和不精确随机模型的分析和设计提供了一种有效的方法。理论结果伴随着对流行模型和排队网络的深入分析。这些例子说明了数值方法的适用性和近似的紧密性。

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