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EXPLORATION OF MULTIFIDELITY UQ SAMPLING STRATEGIES FOR COMPUTER NETWORK APPLICATIONS

机译:计算机网络应用的多倍性UQ采样策略的探讨

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Network modeling is a powerful tool to enable rapid analysis of complex systems that can be challenging to study directly using physical testing. Two approaches are considered: emulation and simulation. The former runs real software on virtualized hardware, while the latter mimics the behavior of network components and their interactions in software. Although emulation provides an accurate representation of physical networks, this approach alone cannot guarantee the characterization of the system under realistic operative conditions. Operative conditions for physical networks are often characterized by intrinsic variability (payload size, packet latency, etc.) or a lack of precise knowledge regarding the network configuration (bandwidth, delays, etc.); therefore uncertainty quantification (UQ) strategies should be also employed. UQ strategies require multiple evaluations of the system with a number of evaluation instances that roughly increases with the problem dimensionality, i.e., the number of uncertain parameters. It follows that a typical UQ workflow for network modeling based on emulation can easily become unattainable due to its prohibitive computational cost. In this paper, a multifidelity sampling approach is discussed and applied to network modeling problems. The main idea is to optimally fuse information coming from simulations, which are a low-fidelity version of the emulation problem of interest, in order to decrease the estimator variance. By reducing the estimator variance in a sampling approach it is usually possible to obtain more reliable statistics and therefore a more reliable system characterization. Several network problems of increasing difficulty are presented. For each of them, the performance of the multifidelity estimator is compared with respect to the single fidelity counterpart, namely, Monte Carlo sampling. For all the test problems studied in this work, the multifidelity estimator demonstrated an increased efficiency with respect to MC.
机译:网络建模是一种强大的工具,可以快速分析复杂系统,这些系统可能具有挑战性地使用物理测试学习。考虑了两种方法:仿真和仿真。前者在虚拟化硬件上运行真实软件,而后者模仿了网络组件的行为及其在软件中的交互。虽然仿真提供了物理网络的准确表示,但是这种方法独自不能保证在现实的操作条件下的系统表征。物理网络的操作条件通常是由内在的变化(有效载荷大小,分组等待时间等)或有关网络配置(带宽,延迟等)的精确知识;因此,也应采用不确定性量化(UQ)策略。 UQ策略需要具有多个评估实例的系统进行多次评估,这些情况大致随问题维度,即不确定参数的数量而大致增加。因此,由于其禁止的计算成本,基于仿真的网络建模的典型UQ工作流程可以很容易地变得无法实现。本文讨论了多尺度采样方法并应用于网络建模问题。主要思想是最佳地融合来自仿真的信息,这是仿真问题的低保真版本,以减少估计方差。通过降低采样方法的估计方差,通常可以获得更可靠的统计数据,因此可以更可靠的系统表征。提出了几个增加难度的网络问题。对于它们中的每一个,将多尺寸估计器的性能与单一保真对应物相比进行比较,即蒙特卡罗采样。对于在这项工作中研究的所有测试问题,多尺寸估计器对MC的效率提高了。

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